genetic algorithms

15
Genetic Algorithms By: Anna Scheuler and Aaron Smittle

Upload: wilma-beard

Post on 02-Jan-2016

28 views

Category:

Documents


0 download

DESCRIPTION

Genetic Algorithms. By: Anna Scheuler and Aaron Smittle. What is it?. appeared in the 1950s and 1960s used to find approximations in search problems use principles of natural selection to find an optimized solution part of evolutionary algorithms. Evolutionary Algorithms. - PowerPoint PPT Presentation

TRANSCRIPT

Page 1: Genetic Algorithms

Genetic Algorithms

By: Anna Scheuler and Aaron Smittle

Page 2: Genetic Algorithms

● appeared in the 1950s and 1960s● used to find approximations in search

problems● use principles of natural selection to find

an optimized solution● part of evolutionary algorithms

What is it?

Page 3: Genetic Algorithms

• subset of evolutionary computation

• generic, population based optimization algorithms

• uses aspects of biology

Evolutionary Algorithms

Page 4: Genetic Algorithms

• Gene = smallest unit of datao represented in binary

• Genome = string of genes

• Genome pool = set of genomeso represents the population

• Mutation

• Crossover

• Inheritance

Biology → Genetic Algorithms

Page 5: Genetic Algorithms

• Loops through every gene of every member

• Two main classes:o no changeo mutable

The Fitness Function

Page 6: Genetic Algorithms

1. Randomly generate an initial population

2. Run fitness function

3. Define parameters for “strong” members

4. Create new generation

5. Introduce mutation

6. Repeat

A simple algorithm runs in O(g*n*m)

The Algorithm

Page 7: Genetic Algorithms

• Opponent adaptation

• Towers of Reus

GAs and Gaming

Page 8: Genetic Algorithms

• Created in 2010 for Zerg

• user inputs goal and the app generates the build order

Star Craft’s Evolution Chamber

Page 9: Genetic Algorithms

● There are 10 cards numbered 1-10.● There must be two piles

○ The sum of the first pile must be as close as possible to 36

○ The product of the second pile must be as close as possible to 360

Card Problem Example

Page 10: Genetic Algorithms

● Genome is the way the cards are divided● Algorithm begins by picking two genomes

at random● They are compared with Fitness test● Copy winner into loser and mutate with

random probability at each gene

Card Problem cont.

Page 11: Genetic Algorithms

Card Problem Fitness Function

Page 12: Genetic Algorithms

● This problem used a Microbial GA○ This type of genetic algorithm features ‘free’

elitism○ Relatively simple core code

Card Problem

Page 13: Genetic Algorithms

http://rednuht.org/genetic_cars_2/

An example

Page 14: Genetic Algorithms

• The fitness function must be carefully written

• Members can get lost

• Population can converge with similar traits

Issues

Page 15: Genetic Algorithms

Questions?