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Mike's Genetic Bit String Evolver

This library is intended to help you apply a genetic algorithm to any number of your own projects.

License

This software is licensed under GPLv3

How to Use

The general process is quite simple:

  1. Decide what thing of your own you'd like to evolve. This could be anything that can be represented with a binary string:

    • Simple floating point numbers or integers
    • Neural networks
    • Instructions that come together to make a program of some sort (ie LISP)
    • Anything you can imagine you'd like to evolve using a genetic algorothm
  2. Write an encoder function which will convert your thing into a string of bits

  3. Write a decoder function which will convert a string of bits into your thing

  4. Write a fitness function that will give your thing a score based on how well it performs (using whatever arbitrary rules and tests you care to).

  5. Include this library in your program; Use the Population classes to manage and evolve your Chromosome classes.

  6. A typical workflow where you repeatedly evolve your things could be something like:

    1. Create a population using the Population class
    2. Use the Population class to grab individuals of the Chromosome class
    3. Grab each Chromosome's bit string with the method Chromosome::ToString()
    4. Decode each bit string to an instance of one of your things, keeping track of which Chromosome it was decoded from
    5. Run whatever tests you want, in order to determine the fitness of each of your thing instances (fitness is just a number; the higher the better).
    6. Iterate over all your thing instances and tell their linked Chromosome about the fitness you just calculated
    7. Use the Population class to perform an evolution of all the Chromosome classes at once with the method Population::Evolve()
    8. Delete all your thing instances, since they now refer to the previous generation of Chromosome instances that no longer exist
    9. Go back to Step 2 and keep repeating as long as you're seeing improvement.

Note that you don't actually need to write an encoder if you decide to do it this way.

Encoder / Decoder Examples

Simple Example Suppose you wanted to evolve an unsigned integer using only one byte (ranging from 0 to 255). Suppose at some point your unsigned integer is the number 11. Your encoder should produce the bit string 00001011, since that's just 11 in binary. Your decoder should be able to turn 00001011 back into the number 11.

Slightly Less Simple Example Suppose you wanted to evolve a program. For simplicity, we'll start by saying this is a simple language that can only print and exit. You might represent this by saying an instruction starts with four bits, followed by an eight bit number. Suppose we assign 0000 to the instruction exit, and 0001 to the instruction print. Now take the following simple program:

print 5
exit 0

Our encoder would then represent this program with the following bit string:

000100000101000000000000

Features

The following features have been implemented thus far:

  • Sexual Reproduction Two parent Chromosomes are selected, and a simple crossover operator is used to combine their bits into a single child Chromosome, before applying mutation.

  • Asexual Reproduction One parent Chromosome duplicates itself exactly into a child Chromosome, before applying mutation

  • Roulette Wheel Selection When choosing parent Chromosomes to produce offspring, a method is used to allow Chromosomes that have higher fitness to reproduce more often, yet without guaranteeing any fit Chromosome will reproduce. Less fit Chromosomes will have less chance to reproduce, but aren't guaranteed not to reproduce.

  • Elitism Before evolving a population of Chromosomes, a few of the most fit Chromosomes are copied directly into the next population without modification, in an attempt to ensure that a population's Champions (most fit Chromosomes) never get worse as a result of evolution. Elitism has two modes, currently:

    • Rate : The number of champions is determined by taking a percentage of the total population. A rate of 2% with a population size of 200 would result in 4 champions
    • Absolute : The number of champions can be set to any whole number manually

Special Thank You

I would like to thank my old professor, Christopher Ryu, Ph.D., for teaching a great Artificial Intelligence class and inspiring me to create this project while taking his class.

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Use a genetic algorithm to evolve populations of bit strings. This is a mirror.

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