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i'm trying to solve the problem of crossover in genetic algorithm on my permutations. Let's say I have two permutations of 20 integers. I want to crossover them to get two children. Parents have the same integers inside, but the order is different.


 5 12 60 50 42 21 530 999 112 234 15 152 601 750 442 221 30 969 113 134
 12 750 42 113 530 112 5 23415 60 152 601 999 442 221 50 30 969  134 21

Let it be that way - how can I get children of these two?

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What is the logic behind computing the children? An output array will help. – Achrome Jan 20 '13 at 0:31
Cause I want to solve this problem with genetics. – pawel Jan 20 '13 at 0:39
Every genetic algorithm has a fitness test, where you define a set of rules to decide which children will survive and which will die. That was what I wanted to know. – Achrome Jan 20 '13 at 0:42
Wow, didn't know that : ] I chose parents that they're "the best" - I just wanted to have efficient way to compute children with no repeated elements right now. – pawel Jan 20 '13 at 0:53
How would that be different from running a simple permutation on either Parent1, or Parent2? – Achrome Jan 20 '13 at 1:21
up vote 5 down vote accepted

What you are looking for is ordered crossover. There is an explanation for the Travelling Salesman Problem here.

Here is some Java code that implements the partially mapped crossover (PMX) variant.

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The choice of crossover depends on whether the order or the absolute position of the integers is important to the fitness. In HeuristicLab (C#) we have implemented several popular ones found in the literature which include: OrderCrossover (2 variants), OrderBasedCrossover, PartiallyMatchedCrossover, CyclicCrossover (2 variants), EdgeRecombinationCrossover (ERX), MaximalPreservativeCrossover, PositionBasedCrossover and UniformLikeCrossover. Their implementation can be found together with reference to a scientific source in the HeuristicLab.Encodings.PermutationEncoding plugin. The ERX makes sense only for the TSP or TSP-like problems. The CX is position-based, the PMX is partly position partly order based, but more towards position. The OX is solely order based.

Beware that our implementations assume a continous numbered permutation with integers from 0 to N-1. You have to map them to this range first.

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