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I have made a quite few genetic algorithms; they work (they find a reasonable solution quickly). But I have now discovered TDD. Is there a way to write a genetic algorithm (which relies heavily on random numbers) in a TDD way?

To pose the question more generally, How do you test a non-deterministic method/function. Here is what I have thought of:

  1. Use a specific seed. Which wont help if I make a mistake in the code in the first place but will help finding bugs when refactoring.

  2. Use a known list of numbers. Similar to the above but I could follow the code through by hand (which would be very tedious).

  3. Use a constant number. At least I know what to expect. It would be good to ensure that a dice always reads 6 when RandomFloat(0,1) always returns 1.

  4. Try to move as much of the non-deterministic code out of the GA as possible. which seems silly as that is the core of it's purpose.

Links to very good books on testing would be appreciated too.

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interesting question +1 – AndreiM Jun 24 '09 at 15:33
+1 good question! – Aiden Bell Jun 24 '09 at 15:43
I like this question a lot, too. Interested to see everyone's take on it. – cwash Jun 24 '09 at 16:58

10 Answers 10

up vote 14 down vote accepted

Seems to me that the only way to test its consistent logic is to apply consistent input, ... or treat each iteration as a single automaton whose state is tested before and after that iteration, turning the overall nondeterministic system into testable components based on deterministic iteration values.

For variations/breeding/attribute inheritance in iterations, test those values on the boundaries of each iteration and test the global output of all iterations based on known input/output from successful iteration-subtests ...

Because the algorithm is iterative you can use induction in your testing to ensure it works for 1 iteration, n+1 iterations to prove it will produce correct results (regardless of data determinism) for a given input range/domain and the constraints on possible values in the input.

Edit I found this strategies for testing nondeterministic systems which might provide some insight. It might be helpful for statistical analysis of live results once the TDD/development process proves the logic is sound.

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Thanks for the answer. I had hoped of some silver bullet but I guess this just isn't something easy to test. If I pick the random numbers carefully I can test each execution path. I will also do a test with a known fitness-landscape so I can see how well it is performing. – James Brooks Jun 25 '09 at 15:45
@James, just remember with nondeterministic algorithms that there is a marked difference between 'testing the logic' and testing 'expected results'. Do one, then the other. If the first is broken, the second is meaningless. – Aiden Bell Jun 25 '09 at 15:51
Current download page of " Optimal strategies for testing nondeterministic systems " paper here: – MaD70 Mar 20 '10 at 19:05
@MaD70 - Thanks ;) Link updated – Aiden Bell Mar 20 '10 at 19:15
Upvotes for the optimal testing strategy link. – Novak May 3 '15 at 18:05

I would test random functions by testing them a number of times and analyzing whether the distribution of return values meets the statistical expectations (this involves some statistical knowledge).

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Would this not only evaluate the distribution of values around normal, rather than the fitness of the algorithm to distribute around the normal in the correct way? A broken algorithm will still be broken if you run it twice. If it did search results, it would be like checking the results contained the keywords as validation of search order. – Aiden Bell Jun 24 '09 at 15:58
I didn't say normal distribution, I said that the distribution should meet the statistical expecations, i.e., if you need a random function to return, for example, random values corresponding to a boltzmann distribution, you should check whether a sufficiently high number of test runs form such a distribution. – Svante Jun 24 '09 at 16:04
I see. I think that might be a bit error-prone for TDD. I even think that graph-based statistical analysis as in the paper I linked to should not be the first port of call for unit/functional testing of the logic rather than results on live data. – Aiden Bell Jun 24 '09 at 16:14

If you're talking TDD, I would say definitely start out by picking a constant number and growing your test suite from there. I've done TDD on a few highly mathematical problems and it helps to have a few constant cases you know and have worked out by hand to run with from the beginning.

W/R/T your 4th point, moving nondeterministic code out of the GA, I think this is probably an approach worth considering. If you can decompose the algorithm and separate the nondeterministic concerns, it should make testing the deterministic parts straightforward. As long as you're careful about how you name things I don't think that you're sacrificing much here. Unless I am misunderstanding you, the GA will still delegate to this code, but it lives somewhere else.

As far as links to very good books on (developer) testing my favorites are:

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One way I do for unit testing of non-deterministic functions of GA algorithms is put the election of random numbers in a different function of the logic one that uses that random numbers.

For example, if you have a function that takes a gene (vector of something) and takes two random points of the gene to do something with them (mutation or whatever), you can put the generation of the random numbers in a function, and then pass them along with the gene to another function that contains the logic given that numbers.

This way you can do TDD with the logic function and pass it certain genes and certain numbers, knowing exactly what the logic should do on the gene given that numbers and being able to write asserts on the modified gene.

Another way, to test with the generation of random numbers is externalizing that generation to another class, that could be accessed via a context or loaded from a config value, and using a different one for test executions. There would be two implementations of that class, one for production that generates actual random numbers, and another for testing, that would have ways to accept the numbers that later it will generate. Then in the test you could provide that certain numbers that the class will supply to the tested code.

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You could write a redundant neural network to analyze the results from your algorithm and have the output ranked based on expected outcomes. :)

Break your method down as much as your can. Then you can also have a unit test around just the random part to check the range of values. Even have the test run it a few times to see if the result changes.

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All of your functions should be completely deterministic. This means that none of the functions you are testing should generate the random number inside the function itself. You will want to pass that in as a parameter. That way when your program is making decisions based on your random numbers, you can pass in representative numbers to test the expected output for that number. The only thing that shouldn't be deterministic is your actual random number generator, which you don't really need to worry too much about because you shouldn't be writing this yourself. You should be able to just assume it works as long as its an established library.

That's for your unit tests. For your integration tests, if you are doing that, you might look into mocking your random number generation, replacing it with an algorithm that will return known numbers from 0..n for every random number that you need to generate.

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I wrote a C# TDD Genetic Algorithm didactic application:

Let's take the simplest random result method in the application: PointGenetics.Create, which creates a random point, given the boundaries. For this method I used 5 tests, and none of them relies on a specific seed:

The randomness test is simple: for a large boundary (many possibilities), two consecutive generated points should not be equal. The remaining tests check other constraints.

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Thanks for the response, I'll check out the code later. I've done the testing now and used a vaguely similar approach to you, I think. I tested a variety of things I knew should happen when I gave it specific values for my 'random' numbers. I then checked the distribution was approx' what I expected over 10,000 trials. Not perfect but It will do. – James Brooks Jul 3 '09 at 9:59

Well the most testable part is the fitness function - where all your logic will be. this can be in some cases quite complex (you might be running all sorts of simulations based on input parameters) so you wanna be sure all that stuff works with a whole lot of unit tests, and this work can follow whatever methodology.

With regards to testing the GA parameters (mutation rate, cross-over strategy, whatever) if you're implementing that stuff yourself you can certainly test it (you can again have unit tests around mutation logic etc.) but you won't be able to test the 'fine-tuning' of the GA.

In other words, you won't be able to test if GA actually performs other than by the goodness of the solutions found.

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A test that the algorithm gives you the same result for the same input could help you but sometimes you will make changes that change the result picking behavior of the algorithm.

I would make the most effort to have a test that ensures that the algorithm gives you a correct result. If the algorithm gives you a correct result for a number of static seeds and random values the algorithm works or is not broken through the changes made.

Another chance in TDD is the possibility to evaluate the algorithm. If you can automatically check how good a result is you could add tests that show that a change hasn't lowered the qualities of your results or increased your calculating time unreasonable.

If you want to test your algorithm with many base seeds you maybe want to have to test suits one suit that runs a quick test for starting after every save to ensure that you haven't broken anything and one suit that runs for a longer time for a later evaluation

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I would highly suggest looking into using mock objects for your unit test cases ( You can use them to mock out objects that make random guesses in order to cause you to get expected results instead.

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