#region License Information
/* HeuristicLab
* Copyright (C) 2002-2015 Heuristic and Evolutionary Algorithms Laboratory (HEAL)
*
* This file is part of HeuristicLab.
*
* HeuristicLab is free software: you can redistribute it and/or modify
* it under the terms of the GNU General Public License as published by
* the Free Software Foundation, either version 3 of the License, or
* (at your option) any later version.
*
* HeuristicLab is distributed in the hope that it will be useful,
* but WITHOUT ANY WARRANTY; without even the implied warranty of
* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
* GNU General Public License for more details.
*
* You should have received a copy of the GNU General Public License
* along with HeuristicLab. If not, see .
*/
#endregion
using System;
using System.Collections.Generic;
using System.Linq;
using HeuristicLab.Core;
namespace HeuristicLab.Random {
public static class RandomEnumerable {
public static IEnumerable SampleRandomNumbers(int maxElement, int count) {
return SampleRandomNumbers(Environment.TickCount, 0, maxElement, count);
}
public static IEnumerable SampleRandomNumbers(int start, int end, int count) {
return SampleRandomNumbers(Environment.TickCount, start, end, count);
}
//algorithm taken from progamming pearls page 127
//IMPORTANT because IEnumerables with yield are used the seed must be specified to return always
//the same sequence of numbers without caching the values.
public static IEnumerable SampleRandomNumbers(int seed, int start, int end, int count) {
int remaining = end - start;
var mt = new FastRandom(seed);
for (int i = start; i < end && count > 0; i++) {
double probability = mt.NextDouble();
if (probability < ((double)count) / remaining) {
count--;
yield return i;
}
remaining--;
}
}
///
/// Chooses one elements from a sequence giving each element an equal chance.
///
///
/// Runtime complexity is O(1) for sequences that are of type and
/// O(N) for all other.
///
/// If the sequence is empty.
/// The type of the items to be selected.
/// The sequence of elements.
/// The random number generator to use, its NextDouble() method must produce values in the range [0;1)
/// The number of items to be selected.
/// An element that has been chosen randomly from the sequence.
public static T SampleRandom(this IEnumerable source, IRandom random) {
if (!source.Any()) throw new ArgumentException("sequence is empty.", "source");
return source.SampleRandom(random, 1).First();
}
///
/// Chooses elements from a sequence with repetition with equal chances for each element.
///
///
/// Runtime complexity is O(count) for sequences that are and
/// O(N * count) for all other. No exception is thrown if the sequence is empty.
///
/// The method is online.
///
/// The type of the items to be selected.
/// The sequence of elements.
/// The random number generator to use, its NextDouble() method must produce values in the range [0;1)
/// The number of items to be selected.
/// A sequence of elements that have been chosen randomly.
public static IEnumerable SampleRandom(this IEnumerable source, IRandom random, int count) {
var listSource = source as IList;
if (listSource != null) {
while (count > 0) {
yield return listSource[random.Next(listSource.Count)];
count--;
}
} else {
while (count > 0) {
var enumerator = source.GetEnumerator();
enumerator.MoveNext();
T selectedItem = enumerator.Current;
int counter = 1;
while (enumerator.MoveNext()) {
counter++;
if (counter * random.NextDouble() < 1.0)
selectedItem = enumerator.Current;
}
yield return selectedItem;
count--;
}
}
}
///
/// Chooses elements from a sequence without repetition with equal chances for each element.
/// The items are returned in the same order as they appear in the sequence.
///
///
/// Runtime complexity is O(N) for all sequences.
/// No exception is thrown if the sequence contains less items than there are to be selected.
///
/// The method is online.
///
/// The type of the items to be selected.
/// The sequence of elements.
/// The random number generator to use, its NextDouble() method must produce values in the range [0;1)
/// The number of items to be selected.
/// Optional parameter specifying the number of elements in the source enumerations
/// A sequence of elements that have been chosen randomly.
public static IEnumerable SampleRandomWithoutRepetition(this IEnumerable source, IRandom random, int count, int sourceCount = -1) {
if (sourceCount == -1) sourceCount = source.Count();
int remaining = sourceCount;
foreach (var item in source) {
if (random.NextDouble() * remaining < count) {
count--;
yield return item;
if (count <= 0) break;
}
remaining--;
}
}
///
/// Chooses elements out of a sequence with repetition. The chance that an item is selected is proportional or inverse-proportional
/// to the .
///
///
/// In case both and are false values must be > 0,
/// otherwise an InvalidOperationException is thrown.
///
/// The method internally holds two arrays: One that is the sequence itself and another one for the values.
///
/// The type of the items to be selected.
/// The sequence of elements.
/// The random number generator to use, its NextDouble() method must produce values in the range [0;1)
/// The number of items to be selected.
/// The weight values for the items.
/// Whether to scale the proportional values or not.
/// Determines whether to choose proportionally (false) or inverse-proportionally (true).
/// A sequence of selected items. The sequence might contain the same item more than once.
public static IEnumerable SampleProportional(this IEnumerable source, IRandom random, int count, IEnumerable weights, bool windowing = true, bool inverseProportional = false) {
return source.SampleProportional(random, weights, windowing, inverseProportional).Take(count);
}
///
/// Same as , but chooses an item exactly once.
///
///
/// In case both and are false values must be > 0,
/// otherwise an InvalidOperationException is thrown.
///
/// The method internally holds two arrays: One that is the sequence itself and another one for the values.
///
/// The method does not check if the number of elements in source and weights are the same.
///
/// The type of the items to be selected.
/// The sequence of elements.
/// The random number generator to use, its NextDouble() method must produce values in the range [0;1)
/// The number of items to be selected.
/// The weight values for the items.
/// Whether to scale the proportional values or not.
/// Determines whether to choose proportionally (true) or inverse-proportionally (false).
/// A sequence of selected items. Might actually be shorter than elements if source has less than elements.
public static IEnumerable SampleProportionalWithoutRepetition(this IEnumerable source, IRandom random, int count, IEnumerable weights, bool windowing = true, bool inverseProportional = false) {
return source.SampleProportionalWithoutRepetition(random, weights, windowing, inverseProportional).Take(count);
}
#region Proportional Helpers
private static IEnumerable SampleProportional(this IEnumerable source, IRandom random, IEnumerable weights, bool windowing, bool inverseProportional) {
var sourceArray = source.ToArray();
var valueArray = PrepareProportional(weights, windowing, inverseProportional);
double total = valueArray.Sum();
while (true) {
int index = 0;
double ball = valueArray[index], sum = random.NextDouble() * total;
while (ball < sum)
ball += valueArray[++index];
yield return sourceArray[index];
}
}
private static IEnumerable SampleProportionalWithoutRepetition(this IEnumerable source, IRandom random, IEnumerable weights, bool windowing, bool inverseProportional) {
var valueArray = PrepareProportional(weights, windowing, inverseProportional);
var list = new LinkedList>(source.Zip(valueArray, Tuple.Create));
double total = valueArray.Sum();
while (list.Count > 0) {
var cur = list.First;
double ball = cur.Value.Item2, sum = random.NextDouble() * total; // assert: sum < total. When there is only one item remaining: sum < ball
while (ball < sum) {
cur = cur.Next;
ball += cur.Value.Item2;
}
yield return cur.Value.Item1;
list.Remove(cur);
total -= cur.Value.Item2;
}
}
private static double[] PrepareProportional(IEnumerable weights, bool windowing, bool inverseProportional) {
double maxValue = double.MinValue, minValue = double.MaxValue;
double[] valueArray = weights.ToArray();
for (int i = 0; i < valueArray.Length; i++) {
if (valueArray[i] > maxValue) maxValue = valueArray[i];
if (valueArray[i] < minValue) minValue = valueArray[i];
}
if (minValue == maxValue) { // all values are equal
for (int i = 0; i < valueArray.Length; i++) {
valueArray[i] = 1.0;
}
} else {
if (windowing) {
if (inverseProportional) InverseProportionalScale(valueArray, maxValue);
else ProportionalScale(valueArray, minValue);
} else {
if (minValue < 0.0) throw new InvalidOperationException("Proportional selection without windowing does not work with values < 0.");
if (inverseProportional) InverseProportionalScale(valueArray, 2 * maxValue);
}
}
return valueArray;
}
private static void ProportionalScale(double[] values, double minValue) {
for (int i = 0; i < values.Length; i++) {
values[i] = values[i] - minValue;
}
}
private static void InverseProportionalScale(double[] values, double maxValue) {
for (int i = 0; i < values.Length; i++) {
values[i] = maxValue - values[i];
}
}
#endregion
///
/// Shuffles an enumerable and returns a new enumerable according to the Fisher-Yates shuffle.
///
///
/// Note that the source enumerable is transformed into an array.
///
/// The implementation is described in http://stackoverflow.com/questions/1287567/c-is-using-random-and-orderby-a-good-shuffle-algorithm.
///
/// The type of the items that are to be shuffled.
/// The enumerable that contains the items.
/// The random number generator, its Next(n) method must deliver uniformly distributed random numbers in the range [0;n).
/// An enumerable with the elements shuffled.
public static IEnumerable Shuffle(this IEnumerable source, IRandom random) {
T[] elements = source.ToArray();
for (int i = elements.Length - 1; i > 0; i--) {
// Swap element "i" with a random earlier element (including itself)
int swapIndex = random.Next(i + 1);
yield return elements[swapIndex];
elements[swapIndex] = elements[i];
// we don't actually perform the swap, we can forget about the
// swapped element because we already returned it.
}
yield return elements[0];
}
}
}