1 | /*
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2 | * SVM.NET Library
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3 | * Copyright (C) 2008 Matthew Johnson
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4 | *
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5 | * This program is free software: you can redistribute it and/or modify
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6 | * it under the terms of the GNU General Public License as published by
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7 | * the Free Software Foundation, either version 3 of the License, or
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8 | * (at your option) any later version.
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9 | *
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10 | * This program is distributed in the hope that it will be useful,
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11 | * but WITHOUT ANY WARRANTY; without even the implied warranty of
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12 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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13 | * GNU General Public License for more details.
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14 | *
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15 | * You should have received a copy of the GNU General Public License
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16 | * along with this program. If not, see <http://www.gnu.org/licenses/>.
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17 | */
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18 |
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19 |
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20 | using System;
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21 | using System.Linq;
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22 | using System.Collections.Generic;
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23 | using System.Diagnostics;
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24 | using System.IO;
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25 |
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26 | namespace SVM
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27 | {
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28 |
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29 | // An SMO algorithm in Fan et al., JMLR 6(2005), p. 1889--1918
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30 | // Solves:
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31 | //
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32 | // Min 0.5(\alpha^T Q \alpha) + p^T \alpha
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33 | //
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34 | // y^T \alpha = \delta
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35 | // y_i = +1 or -1
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36 | // 0 <= alpha_i <= Cp for y_i = 1
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37 | // 0 <= alpha_i <= Cn for y_i = -1
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38 | //
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39 | // Given:
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40 | //
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41 | // Q, p, y, Cp, Cn, and an initial feasible point \alpha
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42 | // l is the size of vectors and matrices
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43 | // eps is the stopping tolerance
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44 | //
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45 | // solution will be put in \alpha, objective value will be put in obj
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46 | //
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47 | internal class Solver
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48 | {
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49 | protected int active_size;
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50 | protected sbyte[] y;
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51 | protected double[] G; // gradient of objective function
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52 | private const byte LOWER_BOUND = 0;
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53 | private const byte UPPER_BOUND = 1;
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54 | private const byte FREE = 2;
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55 | private byte[] alpha_status; // LOWER_BOUND, UPPER_BOUND, FREE
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56 | private double[] alpha;
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57 | protected IQMatrix Q;
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58 | protected float[] QD;
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59 | protected double EPS;
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60 | private double Cp, Cn;
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61 | private double[] p;
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62 | private int[] active_set;
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63 | private double[] G_bar; // gradient, if we treat free variables as 0
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64 | protected int l;
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65 | protected bool unshrink; // XXX
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66 |
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67 | protected const double INF = double.PositiveInfinity;
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68 |
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69 | private double get_C(int i)
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70 | {
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71 | return (y[i] > 0) ? Cp : Cn;
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72 | }
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73 |
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74 | private void update_alpha_status(int i)
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75 | {
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76 | if (alpha[i] >= get_C(i))
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77 | alpha_status[i] = UPPER_BOUND;
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78 | else if (alpha[i] <= 0)
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79 | alpha_status[i] = LOWER_BOUND;
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80 | else alpha_status[i] = FREE;
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81 | }
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82 |
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83 | protected bool is_upper_bound(int i) { return alpha_status[i] == UPPER_BOUND; }
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84 | protected bool is_lower_bound(int i) { return alpha_status[i] == LOWER_BOUND; }
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85 |
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86 | private bool is_free(int i) { return alpha_status[i] == FREE; }
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87 |
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88 | public class SolutionInfo
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89 | {
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90 | public double obj;
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91 | public double rho;
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92 | public double upper_bound_p;
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93 | public double upper_bound_n;
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94 | public double r; // for Solver_NU
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95 | }
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96 |
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97 | protected void swap_index(int i, int j)
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98 | {
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99 | Q.SwapIndex(i, j);
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100 | y.SwapIndex(i, j);
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101 | G.SwapIndex(i, j);
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102 | alpha_status.SwapIndex(i, j);
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103 | alpha.SwapIndex(i, j);
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104 | p.SwapIndex(i, j);
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105 | active_set.SwapIndex(i, j);
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106 | G_bar.SwapIndex(i, j);
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107 | }
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108 |
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109 | protected void reconstruct_gradient()
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110 | {
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111 | // reconstruct inactive elements of G from G_bar and free variables
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112 |
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113 | if (active_size == l) return;
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114 |
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115 | int i, j;
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116 | int nr_free = 0;
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117 |
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118 | for (j = active_size; j < l; j++)
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119 | G[j] = G_bar[j] + p[j];
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120 |
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121 | for (j = 0; j < active_size; j++)
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122 | if (is_free(j))
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123 | nr_free++;
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124 |
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125 | if (2 * nr_free < active_size)
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126 | Procedures.info("\nWarning: using -h 0 may be faster\n");
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127 |
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128 | if (nr_free * l > 2 * active_size * (l - active_size))
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129 | {
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130 | for (i = active_size; i < l; i++)
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131 | {
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132 | float[] Q_i = Q.GetQ(i, active_size);
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133 | for (j = 0; j < active_size; j++)
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134 | if (is_free(j))
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135 | G[i] += alpha[j] * Q_i[j];
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136 | }
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137 | }
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138 | else
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139 | {
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140 | for (i = 0; i < active_size; i++)
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141 | if (is_free(i))
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142 | {
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143 | float[] Q_i = Q.GetQ(i, l);
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144 | double alpha_i = alpha[i];
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145 | for (j = active_size; j < l; j++)
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146 | G[j] += alpha_i * Q_i[j];
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147 | }
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148 | }
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149 | }
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150 |
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151 | public virtual void Solve(int l, IQMatrix Q, double[] p_, sbyte[] y_, double[] alpha_, double Cp, double Cn, double eps, SolutionInfo si, bool shrinking)
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152 | {
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153 | this.l = l;
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154 | this.Q = Q;
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155 | QD = Q.GetQD();
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156 | p = (double[])p_.Clone();
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157 | y = (sbyte[])y_.Clone();
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158 | alpha = (double[])alpha_.Clone();
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159 | this.Cp = Cp;
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160 | this.Cn = Cn;
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161 | this.EPS = eps;
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162 | this.unshrink = false;
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163 |
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164 | // initialize alpha_status
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165 | {
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166 | alpha_status = new byte[l];
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167 | for (int i = 0; i < l; i++)
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168 | update_alpha_status(i);
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169 | }
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170 |
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171 | // initialize active set (for shrinking)
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172 | {
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173 | active_set = new int[l];
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174 | for (int i = 0; i < l; i++)
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175 | active_set[i] = i;
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176 | active_size = l;
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177 | }
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178 |
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179 | // initialize gradient
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180 | {
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181 | G = new double[l];
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182 | G_bar = new double[l];
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183 | int i;
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184 | for (i = 0; i < l; i++)
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185 | {
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186 | G[i] = p[i];
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187 | G_bar[i] = 0;
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188 | }
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189 | for (i = 0; i < l; i++)
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190 | if (!is_lower_bound(i))
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191 | {
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192 | float[] Q_i = Q.GetQ(i, l);
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193 | double alpha_i = alpha[i];
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194 | int j;
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195 | for (j = 0; j < l; j++)
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196 | G[j] += alpha_i * Q_i[j];
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197 | if (is_upper_bound(i))
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198 | for (j = 0; j < l; j++)
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199 | G_bar[j] += get_C(i) * Q_i[j];
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200 | }
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201 | }
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202 |
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203 | // optimization step
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204 |
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205 | int iter = 0;
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206 | int counter = Math.Min(l, 1000) + 1;
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207 | int[] working_set = new int[2];
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208 |
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209 | while (true)
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210 | {
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211 | // show progress and do shrinking
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212 |
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213 | if (--counter == 0)
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214 | {
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215 | counter = Math.Min(l, 1000);
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216 | if (shrinking) do_shrinking();
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217 | Procedures.info(".");
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218 | }
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219 |
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220 | if (select_working_set(working_set) != 0)
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221 | {
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222 | // reconstruct the whole gradient
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223 | reconstruct_gradient();
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224 | // reset active set size and check
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225 | active_size = l;
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226 | Procedures.info("*");
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227 | if (select_working_set(working_set) != 0)
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228 | break;
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229 | else
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230 | counter = 1; // do shrinking next iteration
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231 | }
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232 |
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233 | int i = working_set[0];
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234 | int j = working_set[1];
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235 |
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236 | ++iter;
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237 |
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238 | // update alpha[i] and alpha[j], handle bounds carefully
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239 |
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240 | float[] Q_i = Q.GetQ(i, active_size);
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241 | float[] Q_j = Q.GetQ(j, active_size);
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242 |
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243 | double C_i = get_C(i);
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244 | double C_j = get_C(j);
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245 |
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246 | double old_alpha_i = alpha[i];
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247 | double old_alpha_j = alpha[j];
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248 |
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249 | if (y[i] != y[j])
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250 | {
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251 | double quad_coef = Q_i[i] + Q_j[j] + 2 * Q_i[j];
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252 | if (quad_coef <= 0)
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253 | quad_coef = 1e-12;
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254 | double delta = (-G[i] - G[j]) / quad_coef;
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255 | double diff = alpha[i] - alpha[j];
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256 | alpha[i] += delta;
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257 | alpha[j] += delta;
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258 |
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259 | if (diff > 0)
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260 | {
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261 | if (alpha[j] < 0)
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262 | {
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263 | alpha[j] = 0;
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264 | alpha[i] = diff;
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265 | }
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266 | }
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267 | else
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268 | {
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269 | if (alpha[i] < 0)
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270 | {
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271 | alpha[i] = 0;
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272 | alpha[j] = -diff;
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273 | }
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274 | }
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275 | if (diff > C_i - C_j)
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276 | {
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277 | if (alpha[i] > C_i)
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278 | {
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279 | alpha[i] = C_i;
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280 | alpha[j] = C_i - diff;
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281 | }
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282 | }
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283 | else
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284 | {
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285 | if (alpha[j] > C_j)
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286 | {
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287 | alpha[j] = C_j;
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288 | alpha[i] = C_j + diff;
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289 | }
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290 | }
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291 | }
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292 | else
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293 | {
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294 | double quad_coef = Q_i[i] + Q_j[j] - 2 * Q_i[j];
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295 | if (quad_coef <= 0)
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296 | quad_coef = 1e-12;
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297 | double delta = (G[i] - G[j]) / quad_coef;
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298 | double sum = alpha[i] + alpha[j];
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299 | alpha[i] -= delta;
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300 | alpha[j] += delta;
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301 |
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302 | if (sum > C_i)
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303 | {
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304 | if (alpha[i] > C_i)
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305 | {
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306 | alpha[i] = C_i;
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307 | alpha[j] = sum - C_i;
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308 | }
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309 | }
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310 | else
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311 | {
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312 | if (alpha[j] < 0)
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313 | {
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314 | alpha[j] = 0;
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315 | alpha[i] = sum;
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316 | }
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317 | }
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318 | if (sum > C_j)
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319 | {
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320 | if (alpha[j] > C_j)
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321 | {
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322 | alpha[j] = C_j;
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323 | alpha[i] = sum - C_j;
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324 | }
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325 | }
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326 | else
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327 | {
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328 | if (alpha[i] < 0)
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329 | {
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330 | alpha[i] = 0;
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331 | alpha[j] = sum;
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332 | }
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333 | }
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334 | }
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335 |
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336 | // update G
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337 |
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338 | double delta_alpha_i = alpha[i] - old_alpha_i;
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339 | double delta_alpha_j = alpha[j] - old_alpha_j;
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340 |
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341 | for (int k = 0; k < active_size; k++)
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342 | {
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343 | G[k] += Q_i[k] * delta_alpha_i + Q_j[k] * delta_alpha_j;
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344 | }
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345 |
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346 | // update alpha_status and G_bar
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347 |
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348 | {
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349 | bool ui = is_upper_bound(i);
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350 | bool uj = is_upper_bound(j);
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351 | update_alpha_status(i);
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352 | update_alpha_status(j);
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353 | int k;
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354 | if (ui != is_upper_bound(i))
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355 | {
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356 | Q_i = Q.GetQ(i, l);
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357 | if (ui)
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358 | for (k = 0; k < l; k++)
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359 | G_bar[k] -= C_i * Q_i[k];
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360 | else
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361 | for (k = 0; k < l; k++)
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362 | G_bar[k] += C_i * Q_i[k];
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363 | }
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364 |
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365 | if (uj != is_upper_bound(j))
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366 | {
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367 | Q_j = Q.GetQ(j, l);
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368 | if (uj)
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369 | for (k = 0; k < l; k++)
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370 | G_bar[k] -= C_j * Q_j[k];
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371 | else
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372 | for (k = 0; k < l; k++)
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373 | G_bar[k] += C_j * Q_j[k];
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374 | }
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375 | }
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376 |
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377 | }
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378 |
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379 | // calculate rho
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380 |
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381 | si.rho = calculate_rho();
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382 |
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383 | // calculate objective value
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384 | {
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385 | double v = 0;
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386 | int i;
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387 | for (i = 0; i < l; i++)
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388 | v += alpha[i] * (G[i] + p[i]);
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389 |
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390 | si.obj = v / 2;
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391 | }
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392 |
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393 | // put back the solution
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394 | {
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395 | for (int i = 0; i < l; i++)
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396 | alpha_[active_set[i]] = alpha[i];
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397 | }
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398 |
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399 | si.upper_bound_p = Cp;
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400 | si.upper_bound_n = Cn;
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401 |
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402 | Procedures.info("\noptimization finished, #iter = " + iter + "\n");
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403 | }
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404 |
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405 | // return 1 if already optimal, return 0 otherwise
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406 | int select_working_set(int[] working_set)
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407 | {
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408 | // return i,j such that
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409 | // i: Maximizes -y_i * grad(f)_i, i in I_up(\alpha)
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410 | // j: mimimizes the decrease of obj value
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411 | // (if quadratic coefficeint <= 0, replace it with tau)
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412 | // -y_j*grad(f)_j < -y_i*grad(f)_i, j in I_low(\alpha)
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413 |
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414 | double GMax = -INF;
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415 | double GMax2 = -INF;
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416 | int GMax_idx = -1;
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417 | int GMin_idx = -1;
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418 | double obj_diff_Min = INF;
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419 |
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420 | for (int t = 0; t < active_size; t++)
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421 | if (y[t] == +1)
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422 | {
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423 | if (!is_upper_bound(t))
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424 | if (-G[t] >= GMax)
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425 | {
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426 | GMax = -G[t];
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427 | GMax_idx = t;
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428 | }
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429 | }
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430 | else
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431 | {
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432 | if (!is_lower_bound(t))
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433 | if (G[t] >= GMax)
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434 | {
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435 | GMax = G[t];
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436 | GMax_idx = t;
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437 | }
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438 | }
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439 |
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440 | int i = GMax_idx;
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441 | float[] Q_i = null;
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442 | if (i != -1) // null Q_i not accessed: GMax=-INF if i=-1
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443 | Q_i = Q.GetQ(i, active_size);
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444 |
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445 | for (int j = 0; j < active_size; j++)
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446 | {
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447 | if (y[j] == +1)
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448 | {
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449 | if (!is_lower_bound(j))
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450 | {
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451 | double grad_diff = GMax + G[j];
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452 | if (G[j] >= GMax2)
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453 | GMax2 = G[j];
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454 | if (grad_diff > 0)
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455 | {
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456 | double obj_diff;
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457 | double quad_coef = Q_i[i] + QD[j] - 2.0 * y[i] * Q_i[j];
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458 | if (quad_coef > 0)
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459 | obj_diff = -(grad_diff * grad_diff) / quad_coef;
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460 | else
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461 | obj_diff = -(grad_diff * grad_diff) / 1e-12;
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462 |
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463 | if (obj_diff <= obj_diff_Min)
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464 | {
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465 | GMin_idx = j;
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466 | obj_diff_Min = obj_diff;
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467 | }
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468 | }
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469 | }
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470 | }
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471 | else
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472 | {
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473 | if (!is_upper_bound(j))
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474 | {
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475 | double grad_diff = GMax - G[j];
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476 | if (-G[j] >= GMax2)
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477 | GMax2 = -G[j];
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478 | if (grad_diff > 0)
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479 | {
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480 | double obj_diff;
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481 | double quad_coef = Q_i[i] + QD[j] + 2.0 * y[i] * Q_i[j];
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482 | if (quad_coef > 0)
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483 | obj_diff = -(grad_diff * grad_diff) / quad_coef;
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484 | else
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485 | obj_diff = -(grad_diff * grad_diff) / 1e-12;
|
---|
486 |
|
---|
487 | if (obj_diff <= obj_diff_Min)
|
---|
488 | {
|
---|
489 | GMin_idx = j;
|
---|
490 | obj_diff_Min = obj_diff;
|
---|
491 | }
|
---|
492 | }
|
---|
493 | }
|
---|
494 | }
|
---|
495 | }
|
---|
496 |
|
---|
497 | if (GMax + GMax2 < EPS)
|
---|
498 | return 1;
|
---|
499 |
|
---|
500 | working_set[0] = GMax_idx;
|
---|
501 | working_set[1] = GMin_idx;
|
---|
502 | return 0;
|
---|
503 | }
|
---|
504 |
|
---|
505 | private bool be_shrunk(int i, double GMax1, double GMax2)
|
---|
506 | {
|
---|
507 | if (is_upper_bound(i))
|
---|
508 | {
|
---|
509 | if (y[i] == +1)
|
---|
510 | return (-G[i] > GMax1);
|
---|
511 | else
|
---|
512 | return (-G[i] > GMax2);
|
---|
513 | }
|
---|
514 | else if (is_lower_bound(i))
|
---|
515 | {
|
---|
516 | if (y[i] == +1)
|
---|
517 | return (G[i] > GMax2);
|
---|
518 | else
|
---|
519 | return (G[i] > GMax1);
|
---|
520 | }
|
---|
521 | else
|
---|
522 | return (false);
|
---|
523 | }
|
---|
524 |
|
---|
525 | void do_shrinking()
|
---|
526 | {
|
---|
527 | int i;
|
---|
528 | double GMax1 = -INF; // Max { -y_i * grad(f)_i | i in I_up(\alpha) }
|
---|
529 | double GMax2 = -INF; // Max { y_i * grad(f)_i | i in I_low(\alpha) }
|
---|
530 |
|
---|
531 | // find Maximal violating pair first
|
---|
532 | for (i = 0; i < active_size; i++)
|
---|
533 | {
|
---|
534 | if (y[i] == +1)
|
---|
535 | {
|
---|
536 | if (!is_upper_bound(i))
|
---|
537 | {
|
---|
538 | if (-G[i] >= GMax1)
|
---|
539 | GMax1 = -G[i];
|
---|
540 | }
|
---|
541 | if (!is_lower_bound(i))
|
---|
542 | {
|
---|
543 | if (G[i] >= GMax2)
|
---|
544 | GMax2 = G[i];
|
---|
545 | }
|
---|
546 | }
|
---|
547 | else
|
---|
548 | {
|
---|
549 | if (!is_upper_bound(i))
|
---|
550 | {
|
---|
551 | if (-G[i] >= GMax2)
|
---|
552 | GMax2 = -G[i];
|
---|
553 | }
|
---|
554 | if (!is_lower_bound(i))
|
---|
555 | {
|
---|
556 | if (G[i] >= GMax1)
|
---|
557 | GMax1 = G[i];
|
---|
558 | }
|
---|
559 | }
|
---|
560 | }
|
---|
561 |
|
---|
562 | if (unshrink == false && GMax1 + GMax2 <= EPS * 10)
|
---|
563 | {
|
---|
564 | unshrink = true;
|
---|
565 | reconstruct_gradient();
|
---|
566 | active_size = l;
|
---|
567 | }
|
---|
568 |
|
---|
569 | for (i = 0; i < active_size; i++)
|
---|
570 | if (be_shrunk(i, GMax1, GMax2))
|
---|
571 | {
|
---|
572 | active_size--;
|
---|
573 | while (active_size > i)
|
---|
574 | {
|
---|
575 | if (!be_shrunk(active_size, GMax1, GMax2))
|
---|
576 | {
|
---|
577 | swap_index(i, active_size);
|
---|
578 | break;
|
---|
579 | }
|
---|
580 | active_size--;
|
---|
581 | }
|
---|
582 | }
|
---|
583 | }
|
---|
584 |
|
---|
585 | double calculate_rho()
|
---|
586 | {
|
---|
587 | double r;
|
---|
588 | int nr_free = 0;
|
---|
589 | double ub = INF, lb = -INF, sum_free = 0;
|
---|
590 | for (int i = 0; i < active_size; i++)
|
---|
591 | {
|
---|
592 | double yG = y[i] * G[i];
|
---|
593 |
|
---|
594 | if (is_lower_bound(i))
|
---|
595 | {
|
---|
596 | if (y[i] > 0)
|
---|
597 | ub = Math.Min(ub, yG);
|
---|
598 | else
|
---|
599 | lb = Math.Max(lb, yG);
|
---|
600 | }
|
---|
601 | else if (is_upper_bound(i))
|
---|
602 | {
|
---|
603 | if (y[i] < 0)
|
---|
604 | ub = Math.Min(ub, yG);
|
---|
605 | else
|
---|
606 | lb = Math.Max(lb, yG);
|
---|
607 | }
|
---|
608 | else
|
---|
609 | {
|
---|
610 | ++nr_free;
|
---|
611 | sum_free += yG;
|
---|
612 | }
|
---|
613 | }
|
---|
614 |
|
---|
615 | if (nr_free > 0)
|
---|
616 | r = sum_free / nr_free;
|
---|
617 | else
|
---|
618 | r = (ub + lb) / 2;
|
---|
619 |
|
---|
620 | return r;
|
---|
621 | }
|
---|
622 |
|
---|
623 | }
|
---|
624 |
|
---|
625 | //
|
---|
626 | // Solver for nu-svm classification and regression
|
---|
627 | //
|
---|
628 | // additional constraint: e^T \alpha = constant
|
---|
629 | //
|
---|
630 | class Solver_NU : Solver
|
---|
631 | {
|
---|
632 | private SolutionInfo si;
|
---|
633 |
|
---|
634 | public sealed override void Solve(int l, IQMatrix Q, double[] p, sbyte[] y,
|
---|
635 | double[] alpha, double Cp, double Cn, double eps,
|
---|
636 | SolutionInfo si, bool shrinking)
|
---|
637 | {
|
---|
638 | this.si = si;
|
---|
639 | base.Solve(l, Q, p, y, alpha, Cp, Cn, eps, si, shrinking);
|
---|
640 | }
|
---|
641 |
|
---|
642 | // return 1 if already optimal, return 0 otherwise
|
---|
643 | private int select_working_set(int[] working_set)
|
---|
644 | {
|
---|
645 | // return i,j such that y_i = y_j and
|
---|
646 | // i: Maximizes -y_i * grad(f)_i, i in I_up(\alpha)
|
---|
647 | // j: Minimizes the decrease of obj value
|
---|
648 | // (if quadratic coefficeint <= 0, replace it with tau)
|
---|
649 | // -y_j*grad(f)_j < -y_i*grad(f)_i, j in I_low(\alpha)
|
---|
650 |
|
---|
651 | double GMaxp = -INF;
|
---|
652 | double GMaxp2 = -INF;
|
---|
653 | int GMaxp_idx = -1;
|
---|
654 |
|
---|
655 | double GMaxn = -INF;
|
---|
656 | double GMaxn2 = -INF;
|
---|
657 | int GMaxn_idx = -1;
|
---|
658 |
|
---|
659 | int GMin_idx = -1;
|
---|
660 | double obj_diff_Min = INF;
|
---|
661 |
|
---|
662 | for (int t = 0; t < active_size; t++)
|
---|
663 | if (y[t] == +1)
|
---|
664 | {
|
---|
665 | if (!is_upper_bound(t))
|
---|
666 | if (-G[t] >= GMaxp)
|
---|
667 | {
|
---|
668 | GMaxp = -G[t];
|
---|
669 | GMaxp_idx = t;
|
---|
670 | }
|
---|
671 | }
|
---|
672 | else
|
---|
673 | {
|
---|
674 | if (!is_lower_bound(t))
|
---|
675 | if (G[t] >= GMaxn)
|
---|
676 | {
|
---|
677 | GMaxn = G[t];
|
---|
678 | GMaxn_idx = t;
|
---|
679 | }
|
---|
680 | }
|
---|
681 |
|
---|
682 | int ip = GMaxp_idx;
|
---|
683 | int iN = GMaxn_idx;
|
---|
684 | float[] Q_ip = null;
|
---|
685 | float[] Q_in = null;
|
---|
686 | if (ip != -1) // null Q_ip not accessed: GMaxp=-INF if ip=-1
|
---|
687 | Q_ip = Q.GetQ(ip, active_size);
|
---|
688 | if (iN != -1)
|
---|
689 | Q_in = Q.GetQ(iN, active_size);
|
---|
690 |
|
---|
691 | for (int j = 0; j < active_size; j++)
|
---|
692 | {
|
---|
693 | if (y[j] == +1)
|
---|
694 | {
|
---|
695 | if (!is_lower_bound(j))
|
---|
696 | {
|
---|
697 | double grad_diff = GMaxp + G[j];
|
---|
698 | if (G[j] >= GMaxp2)
|
---|
699 | GMaxp2 = G[j];
|
---|
700 | if (grad_diff > 0)
|
---|
701 | {
|
---|
702 | double obj_diff;
|
---|
703 | double quad_coef = Q_ip[ip] + QD[j] - 2 * Q_ip[j];
|
---|
704 | if (quad_coef > 0)
|
---|
705 | obj_diff = -(grad_diff * grad_diff) / quad_coef;
|
---|
706 | else
|
---|
707 | obj_diff = -(grad_diff * grad_diff) / 1e-12;
|
---|
708 |
|
---|
709 | if (obj_diff <= obj_diff_Min)
|
---|
710 | {
|
---|
711 | GMin_idx = j;
|
---|
712 | obj_diff_Min = obj_diff;
|
---|
713 | }
|
---|
714 | }
|
---|
715 | }
|
---|
716 | }
|
---|
717 | else
|
---|
718 | {
|
---|
719 | if (!is_upper_bound(j))
|
---|
720 | {
|
---|
721 | double grad_diff = GMaxn - G[j];
|
---|
722 | if (-G[j] >= GMaxn2)
|
---|
723 | GMaxn2 = -G[j];
|
---|
724 | if (grad_diff > 0)
|
---|
725 | {
|
---|
726 | double obj_diff;
|
---|
727 | double quad_coef = Q_in[iN] + QD[j] - 2 * Q_in[j];
|
---|
728 | if (quad_coef > 0)
|
---|
729 | obj_diff = -(grad_diff * grad_diff) / quad_coef;
|
---|
730 | else
|
---|
731 | obj_diff = -(grad_diff * grad_diff) / 1e-12;
|
---|
732 |
|
---|
733 | if (obj_diff <= obj_diff_Min)
|
---|
734 | {
|
---|
735 | GMin_idx = j;
|
---|
736 | obj_diff_Min = obj_diff;
|
---|
737 | }
|
---|
738 | }
|
---|
739 | }
|
---|
740 | }
|
---|
741 | }
|
---|
742 |
|
---|
743 | if (Math.Max(GMaxp + GMaxp2, GMaxn + GMaxn2) < EPS)
|
---|
744 | return 1;
|
---|
745 |
|
---|
746 | if (y[GMin_idx] == +1)
|
---|
747 | working_set[0] = GMaxp_idx;
|
---|
748 | else
|
---|
749 | working_set[0] = GMaxn_idx;
|
---|
750 | working_set[1] = GMin_idx;
|
---|
751 |
|
---|
752 | return 0;
|
---|
753 | }
|
---|
754 |
|
---|
755 | private bool be_shrunk(int i, double GMax1, double GMax2, double GMax3, double GMax4)
|
---|
756 | {
|
---|
757 | if (is_upper_bound(i))
|
---|
758 | {
|
---|
759 | if (y[i] == +1)
|
---|
760 | return (-G[i] > GMax1);
|
---|
761 | else
|
---|
762 | return (-G[i] > GMax4);
|
---|
763 | }
|
---|
764 | else if (is_lower_bound(i))
|
---|
765 | {
|
---|
766 | if (y[i] == +1)
|
---|
767 | return (G[i] > GMax2);
|
---|
768 | else
|
---|
769 | return (G[i] > GMax3);
|
---|
770 | }
|
---|
771 | else
|
---|
772 | return (false);
|
---|
773 | }
|
---|
774 |
|
---|
775 | private void do_shrinking()
|
---|
776 | {
|
---|
777 | double GMax1 = -INF; // Max { -y_i * grad(f)_i | y_i = +1, i in I_up(\alpha) }
|
---|
778 | double GMax2 = -INF; // Max { y_i * grad(f)_i | y_i = +1, i in I_low(\alpha) }
|
---|
779 | double GMax3 = -INF; // Max { -y_i * grad(f)_i | y_i = -1, i in I_up(\alpha) }
|
---|
780 | double GMax4 = -INF; // Max { y_i * grad(f)_i | y_i = -1, i in I_low(\alpha) }
|
---|
781 |
|
---|
782 | // find Maximal violating pair first
|
---|
783 | int i;
|
---|
784 | for (i = 0; i < active_size; i++)
|
---|
785 | {
|
---|
786 | if (!is_upper_bound(i))
|
---|
787 | {
|
---|
788 | if (y[i] == +1)
|
---|
789 | {
|
---|
790 | if (-G[i] > GMax1) GMax1 = -G[i];
|
---|
791 | }
|
---|
792 | else if (-G[i] > GMax4) GMax4 = -G[i];
|
---|
793 | }
|
---|
794 | if (!is_lower_bound(i))
|
---|
795 | {
|
---|
796 | if (y[i] == +1)
|
---|
797 | {
|
---|
798 | if (G[i] > GMax2) GMax2 = G[i];
|
---|
799 | }
|
---|
800 | else if (G[i] > GMax3) GMax3 = G[i];
|
---|
801 | }
|
---|
802 | }
|
---|
803 |
|
---|
804 | if (unshrink == false && Math.Max(GMax1 + GMax2, GMax3 + GMax4) <= EPS * 10)
|
---|
805 | {
|
---|
806 | unshrink = true;
|
---|
807 | reconstruct_gradient();
|
---|
808 | active_size = l;
|
---|
809 | }
|
---|
810 |
|
---|
811 | for (i = 0; i < active_size; i++)
|
---|
812 | if (be_shrunk(i, GMax1, GMax2, GMax3, GMax4))
|
---|
813 | {
|
---|
814 | active_size--;
|
---|
815 | while (active_size > i)
|
---|
816 | {
|
---|
817 | if (!be_shrunk(active_size, GMax1, GMax2, GMax3, GMax4))
|
---|
818 | {
|
---|
819 | swap_index(i, active_size);
|
---|
820 | break;
|
---|
821 | }
|
---|
822 | active_size--;
|
---|
823 | }
|
---|
824 | }
|
---|
825 | }
|
---|
826 |
|
---|
827 | private double calculate_rho()
|
---|
828 | {
|
---|
829 | int nr_free1 = 0, nr_free2 = 0;
|
---|
830 | double ub1 = INF, ub2 = INF;
|
---|
831 | double lb1 = -INF, lb2 = -INF;
|
---|
832 | double sum_free1 = 0, sum_free2 = 0;
|
---|
833 |
|
---|
834 | for (int i = 0; i < active_size; i++)
|
---|
835 | {
|
---|
836 | if (y[i] == +1)
|
---|
837 | {
|
---|
838 | if (is_lower_bound(i))
|
---|
839 | ub1 = Math.Min(ub1, G[i]);
|
---|
840 | else if (is_upper_bound(i))
|
---|
841 | lb1 = Math.Max(lb1, G[i]);
|
---|
842 | else
|
---|
843 | {
|
---|
844 | ++nr_free1;
|
---|
845 | sum_free1 += G[i];
|
---|
846 | }
|
---|
847 | }
|
---|
848 | else
|
---|
849 | {
|
---|
850 | if (is_lower_bound(i))
|
---|
851 | ub2 = Math.Min(ub2, G[i]);
|
---|
852 | else if (is_upper_bound(i))
|
---|
853 | lb2 = Math.Max(lb2, G[i]);
|
---|
854 | else
|
---|
855 | {
|
---|
856 | ++nr_free2;
|
---|
857 | sum_free2 += G[i];
|
---|
858 | }
|
---|
859 | }
|
---|
860 | }
|
---|
861 |
|
---|
862 | double r1, r2;
|
---|
863 | if (nr_free1 > 0)
|
---|
864 | r1 = sum_free1 / nr_free1;
|
---|
865 | else
|
---|
866 | r1 = (ub1 + lb1) / 2;
|
---|
867 |
|
---|
868 | if (nr_free2 > 0)
|
---|
869 | r2 = sum_free2 / nr_free2;
|
---|
870 | else
|
---|
871 | r2 = (ub2 + lb2) / 2;
|
---|
872 |
|
---|
873 | si.r = (r1 + r2) / 2;
|
---|
874 | return (r1 - r2) / 2;
|
---|
875 | }
|
---|
876 | }
|
---|
877 |
|
---|
878 | //
|
---|
879 | // Q matrices for various formulations
|
---|
880 | //
|
---|
881 | class SVC_Q : Kernel
|
---|
882 | {
|
---|
883 | private sbyte[] y;
|
---|
884 | private Cache cache;
|
---|
885 | private float[] QD;
|
---|
886 |
|
---|
887 | public SVC_Q(Problem prob, Parameter param, sbyte[] y_) : base(prob.Count, prob.X, param)
|
---|
888 | {
|
---|
889 | y = (sbyte[])y_.Clone();
|
---|
890 | cache = new Cache(prob.Count, (long)(param.CacheSize * (1 << 20)));
|
---|
891 | QD = new float[prob.Count];
|
---|
892 | for (int i = 0; i < prob.Count; i++)
|
---|
893 | QD[i] = (float)KernelFunction(i, i);
|
---|
894 | }
|
---|
895 |
|
---|
896 | public override sealed float[] GetQ(int i, int len)
|
---|
897 | {
|
---|
898 | float[] data = null;
|
---|
899 | int start, j;
|
---|
900 | if ((start = cache.GetData(i, ref data, len)) < len)
|
---|
901 | {
|
---|
902 | for (j = start; j < len; j++)
|
---|
903 | data[j] = (float)(y[i] * y[j] * KernelFunction(i, j));
|
---|
904 | }
|
---|
905 | return data;
|
---|
906 | }
|
---|
907 |
|
---|
908 | public override sealed float[] GetQD()
|
---|
909 | {
|
---|
910 | return QD;
|
---|
911 | }
|
---|
912 |
|
---|
913 | public override sealed void SwapIndex(int i, int j)
|
---|
914 | {
|
---|
915 | cache.SwapIndex(i, j);
|
---|
916 | base.SwapIndex(i, j);
|
---|
917 | y.SwapIndex(i, j);
|
---|
918 | QD.SwapIndex(i, j);
|
---|
919 | }
|
---|
920 | }
|
---|
921 |
|
---|
922 | class ONE_CLASS_Q : Kernel
|
---|
923 | {
|
---|
924 | private Cache cache;
|
---|
925 | private float[] QD;
|
---|
926 |
|
---|
927 | public ONE_CLASS_Q(Problem prob, Parameter param) : base(prob.Count, prob.X, param)
|
---|
928 | {
|
---|
929 | cache = new Cache(prob.Count, (long)(param.CacheSize * (1 << 20)));
|
---|
930 | QD = new float[prob.Count];
|
---|
931 | for (int i = 0; i < prob.Count; i++)
|
---|
932 | QD[i] = (float)KernelFunction(i, i);
|
---|
933 | }
|
---|
934 |
|
---|
935 | public override sealed float[] GetQ(int i, int len)
|
---|
936 | {
|
---|
937 | float[] data = null;
|
---|
938 | int start, j;
|
---|
939 | if ((start = cache.GetData(i, ref data, len)) < len)
|
---|
940 | {
|
---|
941 | for (j = start; j < len; j++)
|
---|
942 | data[j] = (float)KernelFunction(i, j);
|
---|
943 | }
|
---|
944 | return data;
|
---|
945 | }
|
---|
946 |
|
---|
947 | public override sealed float[] GetQD()
|
---|
948 | {
|
---|
949 | return QD;
|
---|
950 | }
|
---|
951 |
|
---|
952 | public override sealed void SwapIndex(int i, int j)
|
---|
953 | {
|
---|
954 | cache.SwapIndex(i, j);
|
---|
955 | base.SwapIndex(i, j);
|
---|
956 | QD.SwapIndex(i, j);
|
---|
957 | }
|
---|
958 | }
|
---|
959 |
|
---|
960 | class SVR_Q : Kernel
|
---|
961 | {
|
---|
962 | private int l;
|
---|
963 | private Cache cache;
|
---|
964 | private sbyte[] sign;
|
---|
965 | private int[] index;
|
---|
966 | private int next_buffer;
|
---|
967 | private float[][] buffer;
|
---|
968 | private float[] QD;
|
---|
969 |
|
---|
970 | public SVR_Q(Problem prob, Parameter param) : base(prob.Count, prob.X, param)
|
---|
971 | {
|
---|
972 | l = prob.Count;
|
---|
973 | cache = new Cache(l, (long)(param.CacheSize * (1 << 20)));
|
---|
974 | QD = new float[2 * l];
|
---|
975 | sign = new sbyte[2 * l];
|
---|
976 | index = new int[2 * l];
|
---|
977 | for (int k = 0; k < l; k++)
|
---|
978 | {
|
---|
979 | sign[k] = 1;
|
---|
980 | sign[k + l] = -1;
|
---|
981 | index[k] = k;
|
---|
982 | index[k + l] = k;
|
---|
983 | QD[k] = (float)KernelFunction(k, k);
|
---|
984 | QD[k + l] = QD[k];
|
---|
985 | }
|
---|
986 | buffer = new float[2][];
|
---|
987 | buffer[0] = new float[2 * l];
|
---|
988 | buffer[1] = new float[2 * l];
|
---|
989 | next_buffer = 0;
|
---|
990 | }
|
---|
991 |
|
---|
992 | public override sealed void SwapIndex(int i, int j)
|
---|
993 | {
|
---|
994 | sign.SwapIndex(i, j);
|
---|
995 | index.SwapIndex(i, j);
|
---|
996 | QD.SwapIndex(i, j);
|
---|
997 | }
|
---|
998 |
|
---|
999 | public override sealed float[] GetQ(int i, int len)
|
---|
1000 | {
|
---|
1001 | float[] data = null;
|
---|
1002 | int j, real_i = index[i];
|
---|
1003 | if (cache.GetData(real_i, ref data, l) < l)
|
---|
1004 | {
|
---|
1005 | for (j = 0; j < l; j++)
|
---|
1006 | data[j] = (float)KernelFunction(real_i, j);
|
---|
1007 | }
|
---|
1008 |
|
---|
1009 | // reorder and copy
|
---|
1010 | float[] buf = buffer[next_buffer];
|
---|
1011 | next_buffer = 1 - next_buffer;
|
---|
1012 | sbyte si = sign[i];
|
---|
1013 | for (j = 0; j < len; j++)
|
---|
1014 | buf[j] = (float)si * sign[j] * data[index[j]];
|
---|
1015 | return buf;
|
---|
1016 | }
|
---|
1017 |
|
---|
1018 | public override sealed float[] GetQD()
|
---|
1019 | {
|
---|
1020 | return QD;
|
---|
1021 | }
|
---|
1022 | }
|
---|
1023 |
|
---|
1024 | internal class Procedures
|
---|
1025 | {
|
---|
1026 | private static bool _verbose;
|
---|
1027 | public static bool IsVerbose
|
---|
1028 | {
|
---|
1029 | get
|
---|
1030 | {
|
---|
1031 | return _verbose;
|
---|
1032 | }
|
---|
1033 | set
|
---|
1034 | {
|
---|
1035 | _verbose = value;
|
---|
1036 | }
|
---|
1037 | }
|
---|
1038 | //
|
---|
1039 | // construct and solve various formulations
|
---|
1040 | //
|
---|
1041 | public const int LIBSVM_VERSION = 289;
|
---|
1042 |
|
---|
1043 | public static TextWriter svm_print_string = Console.Out;
|
---|
1044 |
|
---|
1045 | public static void info(string s)
|
---|
1046 | {
|
---|
1047 | if(_verbose)
|
---|
1048 | svm_print_string.Write(s);
|
---|
1049 | }
|
---|
1050 |
|
---|
1051 | private static void solve_c_svc(Problem prob, Parameter param,
|
---|
1052 | double[] alpha, Solver.SolutionInfo si,
|
---|
1053 | double Cp, double Cn)
|
---|
1054 | {
|
---|
1055 | int l = prob.Count;
|
---|
1056 | double[] Minus_ones = new double[l];
|
---|
1057 | sbyte[] y = new sbyte[l];
|
---|
1058 |
|
---|
1059 | int i;
|
---|
1060 |
|
---|
1061 | for (i = 0; i < l; i++)
|
---|
1062 | {
|
---|
1063 | alpha[i] = 0;
|
---|
1064 | Minus_ones[i] = -1;
|
---|
1065 | if (prob.Y[i] > 0) y[i] = +1; else y[i] = -1;
|
---|
1066 | }
|
---|
1067 |
|
---|
1068 | Solver s = new Solver();
|
---|
1069 | s.Solve(l, new SVC_Q(prob, param, y), Minus_ones, y,
|
---|
1070 | alpha, Cp, Cn, param.EPS, si, param.Shrinking);
|
---|
1071 |
|
---|
1072 | double sum_alpha = 0;
|
---|
1073 | for (i = 0; i < l; i++)
|
---|
1074 | sum_alpha += alpha[i];
|
---|
1075 |
|
---|
1076 | if (Cp == Cn)
|
---|
1077 | Procedures.info("nu = " + sum_alpha / (Cp * prob.Count) + "\n");
|
---|
1078 |
|
---|
1079 | for (i = 0; i < l; i++)
|
---|
1080 | alpha[i] *= y[i];
|
---|
1081 | }
|
---|
1082 |
|
---|
1083 | private static void solve_nu_svc(Problem prob, Parameter param,
|
---|
1084 | double[] alpha, Solver.SolutionInfo si)
|
---|
1085 | {
|
---|
1086 | int i;
|
---|
1087 | int l = prob.Count;
|
---|
1088 | double nu = param.Nu;
|
---|
1089 |
|
---|
1090 | sbyte[] y = new sbyte[l];
|
---|
1091 |
|
---|
1092 | for (i = 0; i < l; i++)
|
---|
1093 | if (prob.Y[i] > 0)
|
---|
1094 | y[i] = +1;
|
---|
1095 | else
|
---|
1096 | y[i] = -1;
|
---|
1097 |
|
---|
1098 | double sum_pos = nu * l / 2;
|
---|
1099 | double sum_neg = nu * l / 2;
|
---|
1100 |
|
---|
1101 | for (i = 0; i < l; i++)
|
---|
1102 | if (y[i] == +1)
|
---|
1103 | {
|
---|
1104 | alpha[i] = Math.Min(1.0, sum_pos);
|
---|
1105 | sum_pos -= alpha[i];
|
---|
1106 | }
|
---|
1107 | else
|
---|
1108 | {
|
---|
1109 | alpha[i] = Math.Min(1.0, sum_neg);
|
---|
1110 | sum_neg -= alpha[i];
|
---|
1111 | }
|
---|
1112 |
|
---|
1113 | double[] zeros = new double[l];
|
---|
1114 |
|
---|
1115 | for (i = 0; i < l; i++)
|
---|
1116 | zeros[i] = 0;
|
---|
1117 |
|
---|
1118 | Solver_NU s = new Solver_NU();
|
---|
1119 | s.Solve(l, new SVC_Q(prob, param, y), zeros, y, alpha, 1.0, 1.0, param.EPS, si, param.Shrinking);
|
---|
1120 | double r = si.r;
|
---|
1121 |
|
---|
1122 | Procedures.info("C = " + 1 / r + "\n");
|
---|
1123 |
|
---|
1124 | for (i = 0; i < l; i++)
|
---|
1125 | alpha[i] *= y[i] / r;
|
---|
1126 |
|
---|
1127 | si.rho /= r;
|
---|
1128 | si.obj /= (r * r);
|
---|
1129 | si.upper_bound_p = 1 / r;
|
---|
1130 | si.upper_bound_n = 1 / r;
|
---|
1131 | }
|
---|
1132 |
|
---|
1133 | private static void solve_one_class(Problem prob, Parameter param,
|
---|
1134 | double[] alpha, Solver.SolutionInfo si)
|
---|
1135 | {
|
---|
1136 | int l = prob.Count;
|
---|
1137 | double[] zeros = new double[l];
|
---|
1138 | sbyte[] ones = new sbyte[l];
|
---|
1139 | int i;
|
---|
1140 |
|
---|
1141 | int n = (int)(param.Nu * prob.Count); // # of alpha's at upper bound
|
---|
1142 |
|
---|
1143 | for (i = 0; i < n; i++)
|
---|
1144 | alpha[i] = 1;
|
---|
1145 | if (n < prob.Count)
|
---|
1146 | alpha[n] = param.Nu * prob.Count - n;
|
---|
1147 | for (i = n + 1; i < l; i++)
|
---|
1148 | alpha[i] = 0;
|
---|
1149 |
|
---|
1150 | for (i = 0; i < l; i++)
|
---|
1151 | {
|
---|
1152 | zeros[i] = 0;
|
---|
1153 | ones[i] = 1;
|
---|
1154 | }
|
---|
1155 |
|
---|
1156 | Solver s = new Solver();
|
---|
1157 | s.Solve(l, new ONE_CLASS_Q(prob, param), zeros, ones, alpha, 1.0, 1.0, param.EPS, si, param.Shrinking);
|
---|
1158 | }
|
---|
1159 |
|
---|
1160 | private static void solve_epsilon_svr(Problem prob, Parameter param, double[] alpha, Solver.SolutionInfo si)
|
---|
1161 | {
|
---|
1162 | int l = prob.Count;
|
---|
1163 | double[] alpha2 = new double[2 * l];
|
---|
1164 | double[] linear_term = new double[2 * l];
|
---|
1165 | sbyte[] y = new sbyte[2 * l];
|
---|
1166 | int i;
|
---|
1167 |
|
---|
1168 | for (i = 0; i < l; i++)
|
---|
1169 | {
|
---|
1170 | alpha2[i] = 0;
|
---|
1171 | linear_term[i] = param.P - prob.Y[i];
|
---|
1172 | y[i] = 1;
|
---|
1173 |
|
---|
1174 | alpha2[i + l] = 0;
|
---|
1175 | linear_term[i + l] = param.P + prob.Y[i];
|
---|
1176 | y[i + l] = -1;
|
---|
1177 | }
|
---|
1178 |
|
---|
1179 | Solver s = new Solver();
|
---|
1180 | s.Solve(2 * l, new SVR_Q(prob, param), linear_term, y, alpha2, param.C, param.C, param.EPS, si, param.Shrinking);
|
---|
1181 |
|
---|
1182 | double sum_alpha = 0;
|
---|
1183 | for (i = 0; i < l; i++)
|
---|
1184 | {
|
---|
1185 | alpha[i] = alpha2[i] - alpha2[i + l];
|
---|
1186 | sum_alpha += Math.Abs(alpha[i]);
|
---|
1187 | }
|
---|
1188 | Procedures.info("nu = " + sum_alpha / (param.C * l) + "\n");
|
---|
1189 | }
|
---|
1190 |
|
---|
1191 | private static void solve_nu_svr(Problem prob, Parameter param,
|
---|
1192 | double[] alpha, Solver.SolutionInfo si)
|
---|
1193 | {
|
---|
1194 | int l = prob.Count;
|
---|
1195 | double C = param.C;
|
---|
1196 | double[] alpha2 = new double[2 * l];
|
---|
1197 | double[] linear_term = new double[2 * l];
|
---|
1198 | sbyte[] y = new sbyte[2 * l];
|
---|
1199 | int i;
|
---|
1200 |
|
---|
1201 | double sum = C * param.Nu * l / 2;
|
---|
1202 | for (i = 0; i < l; i++)
|
---|
1203 | {
|
---|
1204 | alpha2[i] = alpha2[i + l] = Math.Min(sum, C);
|
---|
1205 | sum -= alpha2[i];
|
---|
1206 |
|
---|
1207 | linear_term[i] = -prob.Y[i];
|
---|
1208 | y[i] = 1;
|
---|
1209 |
|
---|
1210 | linear_term[i + l] = prob.Y[i];
|
---|
1211 | y[i + l] = -1;
|
---|
1212 | }
|
---|
1213 |
|
---|
1214 | Solver_NU s = new Solver_NU();
|
---|
1215 | s.Solve(2 * l, new SVR_Q(prob, param), linear_term, y, alpha2, C, C, param.EPS, si, param.Shrinking);
|
---|
1216 |
|
---|
1217 | Procedures.info("epsilon = " + (-si.r) + "\n");
|
---|
1218 |
|
---|
1219 | for (i = 0; i < l; i++)
|
---|
1220 | alpha[i] = alpha2[i] - alpha2[i + l];
|
---|
1221 | }
|
---|
1222 |
|
---|
1223 | //
|
---|
1224 | // decision_function
|
---|
1225 | //
|
---|
1226 | internal class decision_function
|
---|
1227 | {
|
---|
1228 | public double[] alpha;
|
---|
1229 | public double rho;
|
---|
1230 | };
|
---|
1231 |
|
---|
1232 | static decision_function svm_train_one(Problem prob, Parameter param, double Cp, double Cn)
|
---|
1233 | {
|
---|
1234 | double[] alpha = new double[prob.Count];
|
---|
1235 | Solver.SolutionInfo si = new Solver.SolutionInfo();
|
---|
1236 | switch (param.SvmType)
|
---|
1237 | {
|
---|
1238 | case SvmType.C_SVC:
|
---|
1239 | solve_c_svc(prob, param, alpha, si, Cp, Cn);
|
---|
1240 | break;
|
---|
1241 | case SvmType.NU_SVC:
|
---|
1242 | solve_nu_svc(prob, param, alpha, si);
|
---|
1243 | break;
|
---|
1244 | case SvmType.ONE_CLASS:
|
---|
1245 | solve_one_class(prob, param, alpha, si);
|
---|
1246 | break;
|
---|
1247 | case SvmType.EPSILON_SVR:
|
---|
1248 | solve_epsilon_svr(prob, param, alpha, si);
|
---|
1249 | break;
|
---|
1250 | case SvmType.NU_SVR:
|
---|
1251 | solve_nu_svr(prob, param, alpha, si);
|
---|
1252 | break;
|
---|
1253 | }
|
---|
1254 |
|
---|
1255 | Procedures.info("obj = " + si.obj + ", rho = " + si.rho + "\n");
|
---|
1256 |
|
---|
1257 | // output SVs
|
---|
1258 |
|
---|
1259 | int nSV = 0;
|
---|
1260 | int nBSV = 0;
|
---|
1261 | for (int i = 0; i < prob.Count; i++)
|
---|
1262 | {
|
---|
1263 | if (Math.Abs(alpha[i]) > 0)
|
---|
1264 | {
|
---|
1265 | ++nSV;
|
---|
1266 | if (prob.Y[i] > 0)
|
---|
1267 | {
|
---|
1268 | if (Math.Abs(alpha[i]) >= si.upper_bound_p)
|
---|
1269 | ++nBSV;
|
---|
1270 | }
|
---|
1271 | else
|
---|
1272 | {
|
---|
1273 | if (Math.Abs(alpha[i]) >= si.upper_bound_n)
|
---|
1274 | ++nBSV;
|
---|
1275 | }
|
---|
1276 | }
|
---|
1277 | }
|
---|
1278 |
|
---|
1279 | Procedures.info("nSV = " + nSV + ", nBSV = " + nBSV + "\n");
|
---|
1280 |
|
---|
1281 | decision_function f = new decision_function();
|
---|
1282 | f.alpha = alpha;
|
---|
1283 | f.rho = si.rho;
|
---|
1284 | return f;
|
---|
1285 | }
|
---|
1286 |
|
---|
1287 | // Platt's binary SVM Probablistic Output: an improvement from Lin et al.
|
---|
1288 | private static void sigmoid_train(int l, double[] dec_values, double[] labels,
|
---|
1289 | double[] probAB)
|
---|
1290 | {
|
---|
1291 | double A, B;
|
---|
1292 | double prior1 = 0, prior0 = 0;
|
---|
1293 | int i;
|
---|
1294 |
|
---|
1295 | for (i = 0; i < l; i++)
|
---|
1296 | if (labels[i] > 0) prior1 += 1;
|
---|
1297 | else prior0 += 1;
|
---|
1298 |
|
---|
1299 | int Max_iter = 100; // Maximal number of iterations
|
---|
1300 | double Min_step = 1e-10; // Minimal step taken in line search
|
---|
1301 | double sigma = 1e-12; // For numerically strict PD of Hessian
|
---|
1302 | double eps = 1e-5;
|
---|
1303 | double hiTarget = (prior1 + 1.0) / (prior1 + 2.0);
|
---|
1304 | double loTarget = 1 / (prior0 + 2.0);
|
---|
1305 | double[] t = new double[l];
|
---|
1306 | double fApB, p, q, h11, h22, h21, g1, g2, det, dA, dB, gd, stepsize;
|
---|
1307 | double newA, newB, newf, d1, d2;
|
---|
1308 | int iter;
|
---|
1309 |
|
---|
1310 | // Initial Point and Initial Fun Value
|
---|
1311 | A = 0.0; B = Math.Log((prior0 + 1.0) / (prior1 + 1.0));
|
---|
1312 | double fval = 0.0;
|
---|
1313 |
|
---|
1314 | for (i = 0; i < l; i++)
|
---|
1315 | {
|
---|
1316 | if (labels[i] > 0) t[i] = hiTarget;
|
---|
1317 | else t[i] = loTarget;
|
---|
1318 | fApB = dec_values[i] * A + B;
|
---|
1319 | if (fApB >= 0)
|
---|
1320 | fval += t[i] * fApB + Math.Log(1 + Math.Exp(-fApB));
|
---|
1321 | else
|
---|
1322 | fval += (t[i] - 1) * fApB + Math.Log(1 + Math.Exp(fApB));
|
---|
1323 | }
|
---|
1324 | for (iter = 0; iter < Max_iter; iter++)
|
---|
1325 | {
|
---|
1326 | // Update Gradient and Hessian (use H' = H + sigma I)
|
---|
1327 | h11 = sigma; // numerically ensures strict PD
|
---|
1328 | h22 = sigma;
|
---|
1329 | h21 = 0.0; g1 = 0.0; g2 = 0.0;
|
---|
1330 | for (i = 0; i < l; i++)
|
---|
1331 | {
|
---|
1332 | fApB = dec_values[i] * A + B;
|
---|
1333 | if (fApB >= 0)
|
---|
1334 | {
|
---|
1335 | p = Math.Exp(-fApB) / (1.0 + Math.Exp(-fApB));
|
---|
1336 | q = 1.0 / (1.0 + Math.Exp(-fApB));
|
---|
1337 | }
|
---|
1338 | else
|
---|
1339 | {
|
---|
1340 | p = 1.0 / (1.0 + Math.Exp(fApB));
|
---|
1341 | q = Math.Exp(fApB) / (1.0 + Math.Exp(fApB));
|
---|
1342 | }
|
---|
1343 | d2 = p * q;
|
---|
1344 | h11 += dec_values[i] * dec_values[i] * d2;
|
---|
1345 | h22 += d2;
|
---|
1346 | h21 += dec_values[i] * d2;
|
---|
1347 | d1 = t[i] - p;
|
---|
1348 | g1 += dec_values[i] * d1;
|
---|
1349 | g2 += d1;
|
---|
1350 | }
|
---|
1351 |
|
---|
1352 | // Stopping Criteria
|
---|
1353 | if (Math.Abs(g1) < eps && Math.Abs(g2) < eps)
|
---|
1354 | break;
|
---|
1355 |
|
---|
1356 | // Finding Newton direction: -inv(H') * g
|
---|
1357 | det = h11 * h22 - h21 * h21;
|
---|
1358 | dA = -(h22 * g1 - h21 * g2) / det;
|
---|
1359 | dB = -(-h21 * g1 + h11 * g2) / det;
|
---|
1360 | gd = g1 * dA + g2 * dB;
|
---|
1361 |
|
---|
1362 |
|
---|
1363 | stepsize = 1; // Line Search
|
---|
1364 | while (stepsize >= Min_step)
|
---|
1365 | {
|
---|
1366 | newA = A + stepsize * dA;
|
---|
1367 | newB = B + stepsize * dB;
|
---|
1368 |
|
---|
1369 | // New function value
|
---|
1370 | newf = 0.0;
|
---|
1371 | for (i = 0; i < l; i++)
|
---|
1372 | {
|
---|
1373 | fApB = dec_values[i] * newA + newB;
|
---|
1374 | if (fApB >= 0)
|
---|
1375 | newf += t[i] * fApB + Math.Log(1 + Math.Exp(-fApB));
|
---|
1376 | else
|
---|
1377 | newf += (t[i] - 1) * fApB + Math.Log(1 + Math.Exp(fApB));
|
---|
1378 | }
|
---|
1379 | // Check sufficient decrease
|
---|
1380 | if (newf < fval + 0.0001 * stepsize * gd)
|
---|
1381 | {
|
---|
1382 | A = newA; B = newB; fval = newf;
|
---|
1383 | break;
|
---|
1384 | }
|
---|
1385 | else
|
---|
1386 | stepsize = stepsize / 2.0;
|
---|
1387 | }
|
---|
1388 |
|
---|
1389 | if (stepsize < Min_step)
|
---|
1390 | {
|
---|
1391 | Procedures.info("Line search fails in two-class probability estimates\n");
|
---|
1392 | break;
|
---|
1393 | }
|
---|
1394 | }
|
---|
1395 |
|
---|
1396 | if (iter >= Max_iter)
|
---|
1397 | Procedures.info("Reaching Maximal iterations in two-class probability estimates\n");
|
---|
1398 | probAB[0] = A; probAB[1] = B;
|
---|
1399 | }
|
---|
1400 |
|
---|
1401 | private static double sigmoid_predict(double decision_value, double A, double B)
|
---|
1402 | {
|
---|
1403 | double fApB = decision_value * A + B;
|
---|
1404 | if (fApB >= 0)
|
---|
1405 | return Math.Exp(-fApB) / (1.0 + Math.Exp(-fApB));
|
---|
1406 | else
|
---|
1407 | return 1.0 / (1 + Math.Exp(fApB));
|
---|
1408 | }
|
---|
1409 |
|
---|
1410 | // Method 2 from the multiclass_prob paper by Wu, Lin, and Weng
|
---|
1411 | private static void multiclass_probability(int k, double[,] r, double[] p)
|
---|
1412 | {
|
---|
1413 | int t, j;
|
---|
1414 | int iter = 0, Max_iter = Math.Max(100, k);
|
---|
1415 | double[,] Q = new double[k,k];
|
---|
1416 | double[] Qp = new double[k];
|
---|
1417 | double pQp, eps = 0.005 / k;
|
---|
1418 |
|
---|
1419 | for (t = 0; t < k; t++)
|
---|
1420 | {
|
---|
1421 | p[t] = 1.0 / k; // Valid if k = 1
|
---|
1422 | Q[t,t] = 0;
|
---|
1423 | for (j = 0; j < t; j++)
|
---|
1424 | {
|
---|
1425 | Q[t,t] += r[j,t] * r[j,t];
|
---|
1426 | Q[t,j] = Q[j,t];
|
---|
1427 | }
|
---|
1428 | for (j = t + 1; j < k; j++)
|
---|
1429 | {
|
---|
1430 | Q[t,t] += r[j,t] * r[j,t];
|
---|
1431 | Q[t,j] = -r[j,t] * r[t,j];
|
---|
1432 | }
|
---|
1433 | }
|
---|
1434 | for (iter = 0; iter < Max_iter; iter++)
|
---|
1435 | {
|
---|
1436 | // stopping condition, recalculate QP,pQP for numerical accuracy
|
---|
1437 | pQp = 0;
|
---|
1438 | for (t = 0; t < k; t++)
|
---|
1439 | {
|
---|
1440 | Qp[t] = 0;
|
---|
1441 | for (j = 0; j < k; j++)
|
---|
1442 | Qp[t] += Q[t,j] * p[j];
|
---|
1443 | pQp += p[t] * Qp[t];
|
---|
1444 | }
|
---|
1445 | double Max_error = 0;
|
---|
1446 | for (t = 0; t < k; t++)
|
---|
1447 | {
|
---|
1448 | double error = Math.Abs(Qp[t] - pQp);
|
---|
1449 | if (error > Max_error)
|
---|
1450 | Max_error = error;
|
---|
1451 | }
|
---|
1452 | if (Max_error < eps) break;
|
---|
1453 |
|
---|
1454 | for (t = 0; t < k; t++)
|
---|
1455 | {
|
---|
1456 | double diff = (-Qp[t] + pQp) / Q[t,t];
|
---|
1457 | p[t] += diff;
|
---|
1458 | pQp = (pQp + diff * (diff * Q[t,t] + 2 * Qp[t])) / (1 + diff) / (1 + diff);
|
---|
1459 | for (j = 0; j < k; j++)
|
---|
1460 | {
|
---|
1461 | Qp[j] = (Qp[j] + diff * Q[t,j]) / (1 + diff);
|
---|
1462 | p[j] /= (1 + diff);
|
---|
1463 | }
|
---|
1464 | }
|
---|
1465 | }
|
---|
1466 | if (iter >= Max_iter)
|
---|
1467 | Procedures.info("Exceeds Max_iter in multiclass_prob\n");
|
---|
1468 | }
|
---|
1469 |
|
---|
1470 | // Cross-validation decision values for probability estimates
|
---|
1471 | private static void svm_binary_svc_probability(Problem prob, Parameter param, double Cp, double Cn, double[] probAB)
|
---|
1472 | {
|
---|
1473 | int i;
|
---|
1474 | int nr_fold = 5;
|
---|
1475 | int[] perm = new int[prob.Count];
|
---|
1476 | double[] dec_values = new double[prob.Count];
|
---|
1477 |
|
---|
1478 | // random shuffle
|
---|
1479 | Random rand = new Random();
|
---|
1480 | for (i = 0; i < prob.Count; i++) perm[i] = i;
|
---|
1481 | for (i = 0; i < prob.Count; i++)
|
---|
1482 | {
|
---|
1483 | int j = i + (int)(rand.NextDouble() * (prob.Count - i));
|
---|
1484 | do { int _ = perm[i]; perm[i] = perm[j]; perm[j] = _; } while (false);
|
---|
1485 | }
|
---|
1486 | for (i = 0; i < nr_fold; i++)
|
---|
1487 | {
|
---|
1488 | int begin = i * prob.Count / nr_fold;
|
---|
1489 | int end = (i + 1) * prob.Count / nr_fold;
|
---|
1490 | int j, k;
|
---|
1491 | Problem subprob = new Problem();
|
---|
1492 |
|
---|
1493 | subprob.Count = prob.Count - (end - begin);
|
---|
1494 | subprob.X = new Node[subprob.Count][];
|
---|
1495 | subprob.Y = new double[subprob.Count];
|
---|
1496 |
|
---|
1497 | k = 0;
|
---|
1498 | for (j = 0; j < begin; j++)
|
---|
1499 | {
|
---|
1500 | subprob.X[k] = prob.X[perm[j]];
|
---|
1501 | subprob.Y[k] = prob.Y[perm[j]];
|
---|
1502 | ++k;
|
---|
1503 | }
|
---|
1504 | for (j = end; j < prob.Count; j++)
|
---|
1505 | {
|
---|
1506 | subprob.X[k] = prob.X[perm[j]];
|
---|
1507 | subprob.Y[k] = prob.Y[perm[j]];
|
---|
1508 | ++k;
|
---|
1509 | }
|
---|
1510 | int p_count = 0, n_count = 0;
|
---|
1511 | for (j = 0; j < k; j++)
|
---|
1512 | if (subprob.Y[j] > 0)
|
---|
1513 | p_count++;
|
---|
1514 | else
|
---|
1515 | n_count++;
|
---|
1516 |
|
---|
1517 | if (p_count == 0 && n_count == 0)
|
---|
1518 | for (j = begin; j < end; j++)
|
---|
1519 | dec_values[perm[j]] = 0;
|
---|
1520 | else if (p_count > 0 && n_count == 0)
|
---|
1521 | for (j = begin; j < end; j++)
|
---|
1522 | dec_values[perm[j]] = 1;
|
---|
1523 | else if (p_count == 0 && n_count > 0)
|
---|
1524 | for (j = begin; j < end; j++)
|
---|
1525 | dec_values[perm[j]] = -1;
|
---|
1526 | else
|
---|
1527 | {
|
---|
1528 | Parameter subparam = (Parameter)param.Clone();
|
---|
1529 | subparam.Probability = false;
|
---|
1530 | subparam.C = 1.0;
|
---|
1531 | subparam.Weights[1] = Cp;
|
---|
1532 | subparam.Weights[-1] = Cn;
|
---|
1533 | Model submodel = svm_train(subprob, subparam);
|
---|
1534 | for (j = begin; j < end; j++)
|
---|
1535 | {
|
---|
1536 | double[] dec_value = new double[1];
|
---|
1537 | svm_predict_values(submodel, prob.X[perm[j]], dec_value);
|
---|
1538 | dec_values[perm[j]] = dec_value[0];
|
---|
1539 | // ensure +1 -1 order; reason not using CV subroutine
|
---|
1540 | dec_values[perm[j]] *= submodel.ClassLabels[0];
|
---|
1541 | }
|
---|
1542 | }
|
---|
1543 | }
|
---|
1544 | sigmoid_train(prob.Count, dec_values, prob.Y, probAB);
|
---|
1545 | }
|
---|
1546 |
|
---|
1547 | // Return parameter of a Laplace distribution
|
---|
1548 | private static double svm_svr_probability(Problem prob, Parameter param)
|
---|
1549 | {
|
---|
1550 | int i;
|
---|
1551 | int nr_fold = 5;
|
---|
1552 | double[] ymv = new double[prob.Count];
|
---|
1553 | double mae = 0;
|
---|
1554 |
|
---|
1555 | Parameter newparam = (Parameter)param.Clone();
|
---|
1556 | newparam.Probability = false;
|
---|
1557 | svm_cross_validation(prob, newparam, nr_fold, ymv);
|
---|
1558 | for (i = 0; i < prob.Count; i++)
|
---|
1559 | {
|
---|
1560 | ymv[i] = prob.Y[i] - ymv[i];
|
---|
1561 | mae += Math.Abs(ymv[i]);
|
---|
1562 | }
|
---|
1563 | mae /= prob.Count;
|
---|
1564 | double std = Math.Sqrt(2 * mae * mae);
|
---|
1565 | int count = 0;
|
---|
1566 | mae = 0;
|
---|
1567 | for (i = 0; i < prob.Count; i++)
|
---|
1568 | if (Math.Abs(ymv[i]) > 5 * std)
|
---|
1569 | count = count + 1;
|
---|
1570 | else
|
---|
1571 | mae += Math.Abs(ymv[i]);
|
---|
1572 | mae /= (prob.Count - count);
|
---|
1573 | Procedures.info("Prob. model for test data: target value = predicted value + z,\nz: Laplace distribution e^(-|z|/sigma)/(2sigma),sigma=" + mae + "\n");
|
---|
1574 | return mae;
|
---|
1575 | }
|
---|
1576 |
|
---|
1577 | // label: label name, start: begin of each class, count: #data of classes, perm: indices to the original data
|
---|
1578 | // perm, length l, must be allocated before calling this subroutine
|
---|
1579 | private static void svm_group_classes(Problem prob, int[] nr_class_ret, int[][] label_ret, int[][] start_ret, int[][] count_ret, int[] perm)
|
---|
1580 | {
|
---|
1581 | int l = prob.Count;
|
---|
1582 | int Max_nr_class = 16;
|
---|
1583 | int nr_class = 0;
|
---|
1584 | int[] label = new int[Max_nr_class];
|
---|
1585 | int[] count = new int[Max_nr_class];
|
---|
1586 | int[] data_label = new int[l];
|
---|
1587 | int i;
|
---|
1588 |
|
---|
1589 | for (i = 0; i < l; i++)
|
---|
1590 | {
|
---|
1591 | int this_label = (int)(prob.Y[i]);
|
---|
1592 | int j;
|
---|
1593 | for (j = 0; j < nr_class; j++)
|
---|
1594 | {
|
---|
1595 | if (this_label == label[j])
|
---|
1596 | {
|
---|
1597 | ++count[j];
|
---|
1598 | break;
|
---|
1599 | }
|
---|
1600 | }
|
---|
1601 | data_label[i] = j;
|
---|
1602 | if (j == nr_class)
|
---|
1603 | {
|
---|
1604 | if (nr_class == Max_nr_class)
|
---|
1605 | {
|
---|
1606 | Max_nr_class *= 2;
|
---|
1607 | int[] new_data = new int[Max_nr_class];
|
---|
1608 | Array.Copy(label, 0, new_data, 0, label.Length);
|
---|
1609 | label = new_data;
|
---|
1610 | new_data = new int[Max_nr_class];
|
---|
1611 | Array.Copy(count, 0, new_data, 0, count.Length);
|
---|
1612 | count = new_data;
|
---|
1613 | }
|
---|
1614 | label[nr_class] = this_label;
|
---|
1615 | count[nr_class] = 1;
|
---|
1616 | ++nr_class;
|
---|
1617 | }
|
---|
1618 | }
|
---|
1619 |
|
---|
1620 | int[] start = new int[nr_class];
|
---|
1621 | start[0] = 0;
|
---|
1622 | for (i = 1; i < nr_class; i++)
|
---|
1623 | start[i] = start[i - 1] + count[i - 1];
|
---|
1624 | for (i = 0; i < l; i++)
|
---|
1625 | {
|
---|
1626 | perm[start[data_label[i]]] = i;
|
---|
1627 | ++start[data_label[i]];
|
---|
1628 | }
|
---|
1629 | start[0] = 0;
|
---|
1630 | for (i = 1; i < nr_class; i++)
|
---|
1631 | start[i] = start[i - 1] + count[i - 1];
|
---|
1632 |
|
---|
1633 | nr_class_ret[0] = nr_class;
|
---|
1634 | label_ret[0] = label;
|
---|
1635 | start_ret[0] = start;
|
---|
1636 | count_ret[0] = count;
|
---|
1637 | }
|
---|
1638 |
|
---|
1639 | //
|
---|
1640 | // Interface functions
|
---|
1641 | //
|
---|
1642 | public static Model svm_train(Problem prob, Parameter param)
|
---|
1643 | {
|
---|
1644 | Model model = new Model();
|
---|
1645 | model.Parameter = param;
|
---|
1646 |
|
---|
1647 | if (param.SvmType == SvmType.ONE_CLASS ||
|
---|
1648 | param.SvmType == SvmType.EPSILON_SVR ||
|
---|
1649 | param.SvmType == SvmType.NU_SVR)
|
---|
1650 | {
|
---|
1651 | // regression or one-class-svm
|
---|
1652 | model.NumberOfClasses = 2;
|
---|
1653 | model.ClassLabels = null;
|
---|
1654 | model.NumberOfSVPerClass = null;
|
---|
1655 | model.PairwiseProbabilityA = null; model.PairwiseProbabilityB = null;
|
---|
1656 | model.SupportVectorCoefficients = new double[1][];
|
---|
1657 |
|
---|
1658 | if (param.Probability &&
|
---|
1659 | (param.SvmType == SvmType.EPSILON_SVR ||
|
---|
1660 | param.SvmType == SvmType.NU_SVR))
|
---|
1661 | {
|
---|
1662 | model.PairwiseProbabilityA = new double[1];
|
---|
1663 | model.PairwiseProbabilityA[0] = svm_svr_probability(prob, param);
|
---|
1664 | }
|
---|
1665 |
|
---|
1666 | decision_function f = svm_train_one(prob, param, 0, 0);
|
---|
1667 | model.Rho = new double[1];
|
---|
1668 | model.Rho[0] = f.rho;
|
---|
1669 |
|
---|
1670 | int nSV = 0;
|
---|
1671 | int i;
|
---|
1672 | for (i = 0; i < prob.Count; i++)
|
---|
1673 | if (Math.Abs(f.alpha[i]) > 0) ++nSV;
|
---|
1674 | model.SupportVectorCount = nSV;
|
---|
1675 | model.SupportVectors = new Node[nSV][];
|
---|
1676 | model.SupportVectorCoefficients[0] = new double[nSV];
|
---|
1677 | int j = 0;
|
---|
1678 | for (i = 0; i < prob.Count; i++)
|
---|
1679 | if (Math.Abs(f.alpha[i]) > 0)
|
---|
1680 | {
|
---|
1681 | model.SupportVectors[j] = prob.X[i];
|
---|
1682 | model.SupportVectorCoefficients[0][j] = f.alpha[i];
|
---|
1683 | ++j;
|
---|
1684 | }
|
---|
1685 | }
|
---|
1686 | else
|
---|
1687 | {
|
---|
1688 | // classification
|
---|
1689 | int l = prob.Count;
|
---|
1690 | int[] tmp_nr_class = new int[1];
|
---|
1691 | int[][] tmp_label = new int[1][];
|
---|
1692 | int[][] tmp_start = new int[1][];
|
---|
1693 | int[][] tmp_count = new int[1][];
|
---|
1694 | int[] perm = new int[l];
|
---|
1695 |
|
---|
1696 | // group training data of the same class
|
---|
1697 | svm_group_classes(prob, tmp_nr_class, tmp_label, tmp_start, tmp_count, perm);
|
---|
1698 | int nr_class = tmp_nr_class[0];
|
---|
1699 | int[] label = tmp_label[0];
|
---|
1700 | int[] start = tmp_start[0];
|
---|
1701 | int[] count = tmp_count[0];
|
---|
1702 | Node[][] x = new Node[l][];
|
---|
1703 | int i;
|
---|
1704 | for (i = 0; i < l; i++)
|
---|
1705 | x[i] = prob.X[perm[i]];
|
---|
1706 |
|
---|
1707 | // calculate weighted C
|
---|
1708 |
|
---|
1709 | double[] weighted_C = new double[nr_class];
|
---|
1710 | for (i = 0; i < nr_class; i++)
|
---|
1711 | weighted_C[i] = param.C;
|
---|
1712 | foreach (int weightedLabel in param.Weights.Keys)
|
---|
1713 | {
|
---|
1714 | int index = Array.IndexOf<int>(label, weightedLabel);
|
---|
1715 | if (index < 0)
|
---|
1716 | Console.Error.WriteLine("warning: class label " + weightedLabel + " specified in weight is not found");
|
---|
1717 | else weighted_C[index] *= param.Weights[weightedLabel];
|
---|
1718 | }
|
---|
1719 |
|
---|
1720 | // train k*(k-1)/2 models
|
---|
1721 |
|
---|
1722 | bool[] nonzero = new bool[l];
|
---|
1723 | for (i = 0; i < l; i++)
|
---|
1724 | nonzero[i] = false;
|
---|
1725 | decision_function[] f = new decision_function[nr_class * (nr_class - 1) / 2];
|
---|
1726 |
|
---|
1727 | double[] probA = null, probB = null;
|
---|
1728 | if (param.Probability)
|
---|
1729 | {
|
---|
1730 | probA = new double[nr_class * (nr_class - 1) / 2];
|
---|
1731 | probB = new double[nr_class * (nr_class - 1) / 2];
|
---|
1732 | }
|
---|
1733 |
|
---|
1734 | int p = 0;
|
---|
1735 | for (i = 0; i < nr_class; i++)
|
---|
1736 | for (int j = i + 1; j < nr_class; j++)
|
---|
1737 | {
|
---|
1738 | Problem sub_prob = new Problem();
|
---|
1739 | int si = start[i], sj = start[j];
|
---|
1740 | int ci = count[i], cj = count[j];
|
---|
1741 | sub_prob.Count = ci + cj;
|
---|
1742 | sub_prob.X = new Node[sub_prob.Count][];
|
---|
1743 | sub_prob.Y = new double[sub_prob.Count];
|
---|
1744 | int k;
|
---|
1745 | for (k = 0; k < ci; k++)
|
---|
1746 | {
|
---|
1747 | sub_prob.X[k] = x[si + k];
|
---|
1748 | sub_prob.Y[k] = +1;
|
---|
1749 | }
|
---|
1750 | for (k = 0; k < cj; k++)
|
---|
1751 | {
|
---|
1752 | sub_prob.X[ci + k] = x[sj + k];
|
---|
1753 | sub_prob.Y[ci + k] = -1;
|
---|
1754 | }
|
---|
1755 |
|
---|
1756 | if (param.Probability)
|
---|
1757 | {
|
---|
1758 | double[] probAB = new double[2];
|
---|
1759 | svm_binary_svc_probability(sub_prob, param, weighted_C[i], weighted_C[j], probAB);
|
---|
1760 | probA[p] = probAB[0];
|
---|
1761 | probB[p] = probAB[1];
|
---|
1762 | }
|
---|
1763 |
|
---|
1764 | f[p] = svm_train_one(sub_prob, param, weighted_C[i], weighted_C[j]);
|
---|
1765 | for (k = 0; k < ci; k++)
|
---|
1766 | if (!nonzero[si + k] && Math.Abs(f[p].alpha[k]) > 0)
|
---|
1767 | nonzero[si + k] = true;
|
---|
1768 | for (k = 0; k < cj; k++)
|
---|
1769 | if (!nonzero[sj + k] && Math.Abs(f[p].alpha[ci + k]) > 0)
|
---|
1770 | nonzero[sj + k] = true;
|
---|
1771 | ++p;
|
---|
1772 | }
|
---|
1773 |
|
---|
1774 | // build output
|
---|
1775 |
|
---|
1776 | model.NumberOfClasses = nr_class;
|
---|
1777 |
|
---|
1778 | model.ClassLabels = new int[nr_class];
|
---|
1779 | for (i = 0; i < nr_class; i++)
|
---|
1780 | model.ClassLabels[i] = label[i];
|
---|
1781 |
|
---|
1782 | model.Rho = new double[nr_class * (nr_class - 1) / 2];
|
---|
1783 | for (i = 0; i < nr_class * (nr_class - 1) / 2; i++)
|
---|
1784 | model.Rho[i] = f[i].rho;
|
---|
1785 |
|
---|
1786 | if (param.Probability)
|
---|
1787 | {
|
---|
1788 | model.PairwiseProbabilityA = new double[nr_class * (nr_class - 1) / 2];
|
---|
1789 | model.PairwiseProbabilityB = new double[nr_class * (nr_class - 1) / 2];
|
---|
1790 | for (i = 0; i < nr_class * (nr_class - 1) / 2; i++)
|
---|
1791 | {
|
---|
1792 | model.PairwiseProbabilityA[i] = probA[i];
|
---|
1793 | model.PairwiseProbabilityB[i] = probB[i];
|
---|
1794 | }
|
---|
1795 | }
|
---|
1796 | else
|
---|
1797 | {
|
---|
1798 | model.PairwiseProbabilityA = null;
|
---|
1799 | model.PairwiseProbabilityB = null;
|
---|
1800 | }
|
---|
1801 |
|
---|
1802 | int nnz = 0;
|
---|
1803 | int[] nz_count = new int[nr_class];
|
---|
1804 | model.NumberOfSVPerClass = new int[nr_class];
|
---|
1805 | for (i = 0; i < nr_class; i++)
|
---|
1806 | {
|
---|
1807 | int nSV = 0;
|
---|
1808 | for (int j = 0; j < count[i]; j++)
|
---|
1809 | if (nonzero[start[i] + j])
|
---|
1810 | {
|
---|
1811 | ++nSV;
|
---|
1812 | ++nnz;
|
---|
1813 | }
|
---|
1814 | model.NumberOfSVPerClass[i] = nSV;
|
---|
1815 | nz_count[i] = nSV;
|
---|
1816 | }
|
---|
1817 |
|
---|
1818 | Procedures.info("Total nSV = " + nnz + "\n");
|
---|
1819 |
|
---|
1820 | model.SupportVectorCount = nnz;
|
---|
1821 | model.SupportVectors = new Node[nnz][];
|
---|
1822 | p = 0;
|
---|
1823 | for (i = 0; i < l; i++)
|
---|
1824 | if (nonzero[i]) model.SupportVectors[p++] = x[i];
|
---|
1825 |
|
---|
1826 | int[] nz_start = new int[nr_class];
|
---|
1827 | nz_start[0] = 0;
|
---|
1828 | for (i = 1; i < nr_class; i++)
|
---|
1829 | nz_start[i] = nz_start[i - 1] + nz_count[i - 1];
|
---|
1830 |
|
---|
1831 | model.SupportVectorCoefficients = new double[nr_class - 1][];
|
---|
1832 | for (i = 0; i < nr_class - 1; i++)
|
---|
1833 | model.SupportVectorCoefficients[i] = new double[nnz];
|
---|
1834 |
|
---|
1835 | p = 0;
|
---|
1836 | for (i = 0; i < nr_class; i++)
|
---|
1837 | for (int j = i + 1; j < nr_class; j++)
|
---|
1838 | {
|
---|
1839 | // classifier (i,j): coefficients with
|
---|
1840 | // i are in sv_coef[j-1][nz_start[i]...],
|
---|
1841 | // j are in sv_coef[i][nz_start[j]...]
|
---|
1842 |
|
---|
1843 | int si = start[i];
|
---|
1844 | int sj = start[j];
|
---|
1845 | int ci = count[i];
|
---|
1846 | int cj = count[j];
|
---|
1847 |
|
---|
1848 | int q = nz_start[i];
|
---|
1849 | int k;
|
---|
1850 | for (k = 0; k < ci; k++)
|
---|
1851 | if (nonzero[si + k])
|
---|
1852 | model.SupportVectorCoefficients[j - 1][q++] = f[p].alpha[k];
|
---|
1853 | q = nz_start[j];
|
---|
1854 | for (k = 0; k < cj; k++)
|
---|
1855 | if (nonzero[sj + k])
|
---|
1856 | model.SupportVectorCoefficients[i][q++] = f[p].alpha[ci + k];
|
---|
1857 | ++p;
|
---|
1858 | }
|
---|
1859 | }
|
---|
1860 | return model;
|
---|
1861 | }
|
---|
1862 |
|
---|
1863 | // Stratified cross validation
|
---|
1864 | public static void svm_cross_validation(Problem prob, Parameter param, int nr_fold, double[] target)
|
---|
1865 | {
|
---|
1866 | Random rand = new Random();
|
---|
1867 | int i;
|
---|
1868 | int[] fold_start = new int[nr_fold + 1];
|
---|
1869 | int l = prob.Count;
|
---|
1870 | int[] perm = new int[l];
|
---|
1871 |
|
---|
1872 | // stratified cv may not give leave-one-out rate
|
---|
1873 | // Each class to l folds -> some folds may have zero elements
|
---|
1874 | if ((param.SvmType == SvmType.C_SVC ||
|
---|
1875 | param.SvmType == SvmType.NU_SVC) && nr_fold < l)
|
---|
1876 | {
|
---|
1877 | int[] tmp_nr_class = new int[1];
|
---|
1878 | int[][] tmp_label = new int[1][];
|
---|
1879 | int[][] tmp_start = new int[1][];
|
---|
1880 | int[][] tmp_count = new int[1][];
|
---|
1881 |
|
---|
1882 | svm_group_classes(prob, tmp_nr_class, tmp_label, tmp_start, tmp_count, perm);
|
---|
1883 |
|
---|
1884 | int nr_class = tmp_nr_class[0];
|
---|
1885 | int[] label = tmp_label[0];
|
---|
1886 | int[] start = tmp_start[0];
|
---|
1887 | int[] count = tmp_count[0];
|
---|
1888 |
|
---|
1889 | // random shuffle and then data grouped by fold using the array perm
|
---|
1890 | int[] fold_count = new int[nr_fold];
|
---|
1891 | int c;
|
---|
1892 | int[] index = new int[l];
|
---|
1893 | for (i = 0; i < l; i++)
|
---|
1894 | index[i] = perm[i];
|
---|
1895 | for (c = 0; c < nr_class; c++)
|
---|
1896 | for (i = 0; i < count[c]; i++)
|
---|
1897 | {
|
---|
1898 | int j = i + (int)(rand.NextDouble() * (count[c] - i));
|
---|
1899 | do { int _ = index[start[c] + j]; index[start[c] + j] = index[start[c] + i]; index[start[c] + i] = _; } while (false);
|
---|
1900 | }
|
---|
1901 | for (i = 0; i < nr_fold; i++)
|
---|
1902 | {
|
---|
1903 | fold_count[i] = 0;
|
---|
1904 | for (c = 0; c < nr_class; c++)
|
---|
1905 | fold_count[i] += (i + 1) * count[c] / nr_fold - i * count[c] / nr_fold;
|
---|
1906 | }
|
---|
1907 | fold_start[0] = 0;
|
---|
1908 | for (i = 1; i <= nr_fold; i++)
|
---|
1909 | fold_start[i] = fold_start[i - 1] + fold_count[i - 1];
|
---|
1910 | for (c = 0; c < nr_class; c++)
|
---|
1911 | for (i = 0; i < nr_fold; i++)
|
---|
1912 | {
|
---|
1913 | int begin = start[c] + i * count[c] / nr_fold;
|
---|
1914 | int end = start[c] + (i + 1) * count[c] / nr_fold;
|
---|
1915 | for (int j = begin; j < end; j++)
|
---|
1916 | {
|
---|
1917 | perm[fold_start[i]] = index[j];
|
---|
1918 | fold_start[i]++;
|
---|
1919 | }
|
---|
1920 | }
|
---|
1921 | fold_start[0] = 0;
|
---|
1922 | for (i = 1; i <= nr_fold; i++)
|
---|
1923 | fold_start[i] = fold_start[i - 1] + fold_count[i - 1];
|
---|
1924 | }
|
---|
1925 | else
|
---|
1926 | {
|
---|
1927 | for (i = 0; i < l; i++) perm[i] = i;
|
---|
1928 | for (i = 0; i < l; i++)
|
---|
1929 | {
|
---|
1930 | int j = i + (int)(rand.NextDouble() * (l - i));
|
---|
1931 | do { int _ = perm[i]; perm[i] = perm[j]; perm[j] = _; } while (false);
|
---|
1932 | }
|
---|
1933 | for (i = 0; i <= nr_fold; i++)
|
---|
1934 | fold_start[i] = i * l / nr_fold;
|
---|
1935 | }
|
---|
1936 |
|
---|
1937 | for (i = 0; i < nr_fold; i++)
|
---|
1938 | {
|
---|
1939 | int begin = fold_start[i];
|
---|
1940 | int end = fold_start[i + 1];
|
---|
1941 | int j, k;
|
---|
1942 | Problem subprob = new Problem();
|
---|
1943 |
|
---|
1944 | subprob.Count = l - (end - begin);
|
---|
1945 | subprob.X = new Node[subprob.Count][];
|
---|
1946 | subprob.Y = new double[subprob.Count];
|
---|
1947 |
|
---|
1948 | k = 0;
|
---|
1949 | for (j = 0; j < begin; j++)
|
---|
1950 | {
|
---|
1951 | subprob.X[k] = prob.X[perm[j]];
|
---|
1952 | subprob.Y[k] = prob.Y[perm[j]];
|
---|
1953 | ++k;
|
---|
1954 | }
|
---|
1955 | for (j = end; j < l; j++)
|
---|
1956 | {
|
---|
1957 | subprob.X[k] = prob.X[perm[j]];
|
---|
1958 | subprob.Y[k] = prob.Y[perm[j]];
|
---|
1959 | ++k;
|
---|
1960 | }
|
---|
1961 | Model submodel = svm_train(subprob, param);
|
---|
1962 | if (param.Probability &&
|
---|
1963 | (param.SvmType == SvmType.C_SVC ||
|
---|
1964 | param.SvmType == SvmType.NU_SVC))
|
---|
1965 | {
|
---|
1966 | double[] prob_estimates = new double[svm_get_nr_class(submodel)];
|
---|
1967 | for (j = begin; j < end; j++)
|
---|
1968 | target[perm[j]] = svm_predict_probability(submodel, prob.X[perm[j]], prob_estimates);
|
---|
1969 | }
|
---|
1970 | else
|
---|
1971 | for (j = begin; j < end; j++)
|
---|
1972 | target[perm[j]] = svm_predict(submodel, prob.X[perm[j]]);
|
---|
1973 | }
|
---|
1974 | }
|
---|
1975 |
|
---|
1976 | public static SvmType svm_get_svm_type(Model model)
|
---|
1977 | {
|
---|
1978 | return model.Parameter.SvmType;
|
---|
1979 | }
|
---|
1980 |
|
---|
1981 | public static int svm_get_nr_class(Model model)
|
---|
1982 | {
|
---|
1983 | return model.NumberOfClasses;
|
---|
1984 | }
|
---|
1985 |
|
---|
1986 | public static void svm_get_labels(Model model, int[] label)
|
---|
1987 | {
|
---|
1988 | if (model.ClassLabels != null)
|
---|
1989 | for (int i = 0; i < model.NumberOfClasses; i++)
|
---|
1990 | label[i] = model.ClassLabels[i];
|
---|
1991 | }
|
---|
1992 |
|
---|
1993 | public static double svm_get_svr_probability(Model model)
|
---|
1994 | {
|
---|
1995 | if ((model.Parameter.SvmType == SvmType.EPSILON_SVR || model.Parameter.SvmType == SvmType.NU_SVR) &&
|
---|
1996 | model.PairwiseProbabilityA != null)
|
---|
1997 | return model.PairwiseProbabilityA[0];
|
---|
1998 | else
|
---|
1999 | {
|
---|
2000 | Console.Error.WriteLine("Model doesn't contain information for SVR probability inference");
|
---|
2001 | return 0;
|
---|
2002 | }
|
---|
2003 | }
|
---|
2004 |
|
---|
2005 | public static void svm_predict_values(Model model, Node[] x, double[] dec_values)
|
---|
2006 | {
|
---|
2007 | if (model.Parameter.SvmType == SvmType.ONE_CLASS ||
|
---|
2008 | model.Parameter.SvmType == SvmType.EPSILON_SVR ||
|
---|
2009 | model.Parameter.SvmType == SvmType.NU_SVR)
|
---|
2010 | {
|
---|
2011 | double[] sv_coef = model.SupportVectorCoefficients[0];
|
---|
2012 | double sum = 0;
|
---|
2013 | for (int i = 0; i < model.SupportVectorCount; i++)
|
---|
2014 | sum += sv_coef[i] * Kernel.KernelFunction(x, model.SupportVectors[i], model.Parameter);
|
---|
2015 | sum -= model.Rho[0];
|
---|
2016 | dec_values[0] = sum;
|
---|
2017 | }
|
---|
2018 | else
|
---|
2019 | {
|
---|
2020 | int i;
|
---|
2021 | int nr_class = model.NumberOfClasses;
|
---|
2022 | int l = model.SupportVectorCount;
|
---|
2023 |
|
---|
2024 | double[] kvalue = new double[l];
|
---|
2025 | for (i = 0; i < l; i++)
|
---|
2026 | kvalue[i] = Kernel.KernelFunction(x, model.SupportVectors[i], model.Parameter);
|
---|
2027 |
|
---|
2028 | int[] start = new int[nr_class];
|
---|
2029 | start[0] = 0;
|
---|
2030 | for (i = 1; i < nr_class; i++)
|
---|
2031 | start[i] = start[i - 1] + model.NumberOfSVPerClass[i - 1];
|
---|
2032 |
|
---|
2033 | int p = 0;
|
---|
2034 | for (i = 0; i < nr_class; i++)
|
---|
2035 | for (int j = i + 1; j < nr_class; j++)
|
---|
2036 | {
|
---|
2037 | double sum = 0;
|
---|
2038 | int si = start[i];
|
---|
2039 | int sj = start[j];
|
---|
2040 | int ci = model.NumberOfSVPerClass[i];
|
---|
2041 | int cj = model.NumberOfSVPerClass[j];
|
---|
2042 |
|
---|
2043 | int k;
|
---|
2044 | double[] coef1 = model.SupportVectorCoefficients[j - 1];
|
---|
2045 | double[] coef2 = model.SupportVectorCoefficients[i];
|
---|
2046 | for (k = 0; k < ci; k++)
|
---|
2047 | sum += coef1[si + k] * kvalue[si + k];
|
---|
2048 | for (k = 0; k < cj; k++)
|
---|
2049 | sum += coef2[sj + k] * kvalue[sj + k];
|
---|
2050 | sum -= model.Rho[p];
|
---|
2051 | dec_values[p] = sum;
|
---|
2052 | p++;
|
---|
2053 | }
|
---|
2054 | }
|
---|
2055 | }
|
---|
2056 |
|
---|
2057 | public static double svm_predict(Model model, Node[] x)
|
---|
2058 | {
|
---|
2059 | if (model.Parameter.SvmType == SvmType.ONE_CLASS ||
|
---|
2060 | model.Parameter.SvmType == SvmType.EPSILON_SVR ||
|
---|
2061 | model.Parameter.SvmType == SvmType.NU_SVR)
|
---|
2062 | {
|
---|
2063 | double[] res = new double[1];
|
---|
2064 | svm_predict_values(model, x, res);
|
---|
2065 |
|
---|
2066 | if (model.Parameter.SvmType == SvmType.ONE_CLASS)
|
---|
2067 | return (res[0] > 0) ? 1 : -1;
|
---|
2068 | else
|
---|
2069 | return res[0];
|
---|
2070 | }
|
---|
2071 | else
|
---|
2072 | {
|
---|
2073 | int i;
|
---|
2074 | int nr_class = model.NumberOfClasses;
|
---|
2075 | double[] dec_values = new double[nr_class * (nr_class - 1) / 2];
|
---|
2076 | svm_predict_values(model, x, dec_values);
|
---|
2077 |
|
---|
2078 | int[] vote = new int[nr_class];
|
---|
2079 | for (i = 0; i < nr_class; i++)
|
---|
2080 | vote[i] = 0;
|
---|
2081 | int pos = 0;
|
---|
2082 | for (i = 0; i < nr_class; i++)
|
---|
2083 | for (int j = i + 1; j < nr_class; j++)
|
---|
2084 | {
|
---|
2085 | if (dec_values[pos++] > 0)
|
---|
2086 | ++vote[i];
|
---|
2087 | else
|
---|
2088 | ++vote[j];
|
---|
2089 | }
|
---|
2090 |
|
---|
2091 | int vote_Max_idx = 0;
|
---|
2092 | for (i = 1; i < nr_class; i++)
|
---|
2093 | if (vote[i] > vote[vote_Max_idx])
|
---|
2094 | vote_Max_idx = i;
|
---|
2095 | return model.ClassLabels[vote_Max_idx];
|
---|
2096 | }
|
---|
2097 | }
|
---|
2098 |
|
---|
2099 | public static double svm_predict_probability(Model model, Node[] x, double[] prob_estimates)
|
---|
2100 | {
|
---|
2101 | if ((model.Parameter.SvmType == SvmType.C_SVC || model.Parameter.SvmType == SvmType.NU_SVC) &&
|
---|
2102 | model.PairwiseProbabilityA != null && model.PairwiseProbabilityB != null)
|
---|
2103 | {
|
---|
2104 | int i;
|
---|
2105 | int nr_class = model.NumberOfClasses;
|
---|
2106 | double[] dec_values = new double[nr_class * (nr_class - 1) / 2];
|
---|
2107 | svm_predict_values(model, x, dec_values);
|
---|
2108 |
|
---|
2109 | double Min_prob = 1e-7;
|
---|
2110 | double[,] pairwise_prob = new double[nr_class, nr_class];
|
---|
2111 |
|
---|
2112 | int k = 0;
|
---|
2113 | for (i = 0; i < nr_class; i++)
|
---|
2114 | {
|
---|
2115 | for (int j = i + 1; j < nr_class; j++)
|
---|
2116 | {
|
---|
2117 | pairwise_prob[i, j] = Math.Min(Math.Max(sigmoid_predict(dec_values[k], model.PairwiseProbabilityA[k], model.PairwiseProbabilityB[k]), Min_prob), 1 - Min_prob);
|
---|
2118 | pairwise_prob[j, i] = 1 - pairwise_prob[i, j];
|
---|
2119 | k++;
|
---|
2120 | }
|
---|
2121 | }
|
---|
2122 | multiclass_probability(nr_class, pairwise_prob, prob_estimates);
|
---|
2123 |
|
---|
2124 | int prob_Max_idx = 0;
|
---|
2125 | for (i = 1; i < nr_class; i++)
|
---|
2126 | if (prob_estimates[i] > prob_estimates[prob_Max_idx])
|
---|
2127 | prob_Max_idx = i;
|
---|
2128 | return model.ClassLabels[prob_Max_idx];
|
---|
2129 | }
|
---|
2130 | else
|
---|
2131 | return svm_predict(model, x);
|
---|
2132 | }
|
---|
2133 |
|
---|
2134 | public static string svm_check_parameter(Problem prob, Parameter param)
|
---|
2135 | {
|
---|
2136 | // svm_type
|
---|
2137 |
|
---|
2138 | SvmType svm_type = param.SvmType;
|
---|
2139 |
|
---|
2140 | // kernel_type, degree
|
---|
2141 |
|
---|
2142 | KernelType kernel_type = param.KernelType;
|
---|
2143 |
|
---|
2144 | if (param.Degree < 0)
|
---|
2145 | return "degree of polynomial kernel < 0";
|
---|
2146 |
|
---|
2147 | // cache_size,eps,C,nu,p,shrinking
|
---|
2148 |
|
---|
2149 | if (param.CacheSize <= 0)
|
---|
2150 | return "cache_size <= 0";
|
---|
2151 |
|
---|
2152 | if (param.EPS <= 0)
|
---|
2153 | return "eps <= 0";
|
---|
2154 |
|
---|
2155 | if (param.Gamma == 0)
|
---|
2156 | param.Gamma = 1.0 / prob.MaxIndex;
|
---|
2157 |
|
---|
2158 | if (svm_type == SvmType.C_SVC ||
|
---|
2159 | svm_type == SvmType.EPSILON_SVR ||
|
---|
2160 | svm_type == SvmType.NU_SVR)
|
---|
2161 | if (param.C <= 0)
|
---|
2162 | return "C <= 0";
|
---|
2163 |
|
---|
2164 | if (svm_type == SvmType.NU_SVC ||
|
---|
2165 | svm_type == SvmType.ONE_CLASS ||
|
---|
2166 | svm_type == SvmType.NU_SVR)
|
---|
2167 | if (param.Nu <= 0 || param.Nu > 1)
|
---|
2168 | return "nu <= 0 or nu > 1";
|
---|
2169 |
|
---|
2170 | if (svm_type == SvmType.EPSILON_SVR)
|
---|
2171 | if (param.P < 0)
|
---|
2172 | return "p < 0";
|
---|
2173 |
|
---|
2174 | if (param.Probability &&
|
---|
2175 | svm_type == SvmType.ONE_CLASS)
|
---|
2176 | return "one-class SVM probability output not supported yet";
|
---|
2177 |
|
---|
2178 | // check whether nu-svc is feasible
|
---|
2179 |
|
---|
2180 | if (svm_type == SvmType.NU_SVC)
|
---|
2181 | {
|
---|
2182 | int l = prob.Count;
|
---|
2183 | int Max_nr_class = 16;
|
---|
2184 | int nr_class = 0;
|
---|
2185 | int[] label = new int[Max_nr_class];
|
---|
2186 | int[] count = new int[Max_nr_class];
|
---|
2187 |
|
---|
2188 | int i;
|
---|
2189 | for (i = 0; i < l; i++)
|
---|
2190 | {
|
---|
2191 | int this_label = (int)prob.Y[i];
|
---|
2192 | int j;
|
---|
2193 | for (j = 0; j < nr_class; j++)
|
---|
2194 | if (this_label == label[j])
|
---|
2195 | {
|
---|
2196 | ++count[j];
|
---|
2197 | break;
|
---|
2198 | }
|
---|
2199 |
|
---|
2200 | if (j == nr_class)
|
---|
2201 | {
|
---|
2202 | if (nr_class == Max_nr_class)
|
---|
2203 | {
|
---|
2204 | Max_nr_class *= 2;
|
---|
2205 | int[] new_data = new int[Max_nr_class];
|
---|
2206 | Array.Copy(label, 0, new_data, 0, label.Length);
|
---|
2207 | label = new_data;
|
---|
2208 |
|
---|
2209 | new_data = new int[Max_nr_class];
|
---|
2210 | Array.Copy(count, 0, new_data, 0, count.Length);
|
---|
2211 | count = new_data;
|
---|
2212 | }
|
---|
2213 | label[nr_class] = this_label;
|
---|
2214 | count[nr_class] = 1;
|
---|
2215 | ++nr_class;
|
---|
2216 | }
|
---|
2217 | }
|
---|
2218 |
|
---|
2219 | for (i = 0; i < nr_class; i++)
|
---|
2220 | {
|
---|
2221 | int n1 = count[i];
|
---|
2222 | for (int j = i + 1; j < nr_class; j++)
|
---|
2223 | {
|
---|
2224 | int n2 = count[j];
|
---|
2225 | if (param.Nu * (n1 + n2) / 2 > Math.Min(n1, n2))
|
---|
2226 | return "specified nu is infeasible";
|
---|
2227 | }
|
---|
2228 | }
|
---|
2229 | }
|
---|
2230 |
|
---|
2231 | return null;
|
---|
2232 | }
|
---|
2233 |
|
---|
2234 | public static int svm_check_probability_model(Model model)
|
---|
2235 | {
|
---|
2236 | if (((model.Parameter.SvmType == SvmType.C_SVC || model.Parameter.SvmType == SvmType.NU_SVC) &&
|
---|
2237 | model.PairwiseProbabilityA != null && model.PairwiseProbabilityB != null) ||
|
---|
2238 | ((model.Parameter.SvmType == SvmType.EPSILON_SVR || model.Parameter.SvmType == SvmType.NU_SVR) &&
|
---|
2239 | model.PairwiseProbabilityA != null))
|
---|
2240 | return 1;
|
---|
2241 | else
|
---|
2242 | return 0;
|
---|
2243 | }
|
---|
2244 | }
|
---|
2245 | }
|
---|