CAP6938 Neuroevolution and Artificial Embryogeny NeuroEvolution of Augmenting Topologies (NEAT)

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CAP6938 Neuroevolution and Artificial Embryogeny NeuroEvolution of Augmenting Topologies (NEAT). Dr. Kenneth Stanley February 6, 2006. TWEANN Problems Reminder. Competing conventions problem Topology matching problem Initial population topology randomization Defective starter genomes - PowerPoint PPT Presentation

Transcript of CAP6938 Neuroevolution and Artificial Embryogeny NeuroEvolution of Augmenting Topologies (NEAT)

CAP6938Neuroevolution and Artificial Embryogeny

NeuroEvolution of Augmenting Topologies

(NEAT)Dr. Kenneth Stanley

February 6, 2006

TWEANN Problems Reminder

• Competing conventions problem– Topology matching problem

• Initial population topology randomization – Defective starter genomes– Unnecessarily high-dimensional search space

• Loss of innovative structures– More complex can’t compete in the short run– Need to protect innovation

• NEAT directly addresses these challenges

Solutions: NEAT

• Historical markings match up different structures• Speciation

– Keeps incompatible networks apart– Protects innovation

• Incremental growth from minimal structure, i.e. complexification– Avoids searching in unnecessarily high-d

space– Makes finding high-d solutions possible

Genetic Encoding in NEAT

Topological Innovation

Link Weight Mutation• A random number is added or subtracted from

the current weight/parameter• The number can be chosen from uniform,

Gaussian (normal) or other distributions• Continuous parameters work best if capped• The probability of mutating a particular gene

may be low or high, and is separate from the magnitude added

• Probabilities and mutation magnitudes have a significant effect

Link Weight Mutation in NEAT C++

randnum=randposneg()*randfloat()*power;if (mut_type==GAUSSIAN) {

randchoice=randfloat(); if (randchoice>gausspoint) ((*curgene)->lnk)->weight+=randnum; else if (randchoice>coldgausspoint) ((*curgene)->lnk)->weight=randnum; } else if (mut_type==COLDGAUSSIAN) ((*curgene)->lnk)->weight=randnum;

//Cap the weights at 3.0 if (((*curgene)->lnk)->weight > 3.0) ((*curgene)->lnk)->weight = 3.0; else if (((*curgene)->lnk)->weight < -3.0) ((*curgene)->lnk)->weight = -3.0;

Topology Matching Problem

• Problem arises from adding new genes• Same gene may be in different positions

• Different genes may be in same positions

Biological Motivation• New genes appeared over biological evolution as well• Nature has a solution to still know which is which

– Process of aligning and matching genes is called synapsis

– Uses homology to align genes:

“. . .Crossing over thus generates homologousrecombination; that is, it occurs between 2 regions ofDNA containing identical or nearly identical sequences.” (Watson et al. 1987)

Artificial Synapsys: Tracking Genes through Historical Markings

The numbers tell exactly when in history particular topological featuresappeared, so now they can be matched up any time in the future. Inother words, they reveal gene homology.

Matching up Genes

Second Component: Speciation Protects Innovation

• Originally used for multimodal function optimization (Mahfood 1995)

• Organisms grouped by similarity (compatibility)• Fitness sharing (Goldberg 1987, Spears 1995):

Organisms in a species share the reward of their fitness peak

• To facilitate this, NEAT needs– A compatibility measure– Clustering based on compatibility, for fitness sharing

Measuring Compatibility• Possible in NEAT through historical markings• 3 factors affect compatibility via historical

markings on connection genes: – Excess – Disjoint– Average Weight Distance W

• Compatibility distance WcNDc

NEc

321

Clustering Into Species

Dynamic Compatibility Thresholding

Fitness Sharing: Assigning Offspring to Species

Third Component: Complexification from Minimal Structure

• Addresses initialization problem• Search begins in minimal-topology space• Lower-dimensional structures easily optimized• Useful innovations eventually survive• So search transitions into good part of higher-dim. space• The ticket to high-dimensional space

NEAT Performed Well on Double Pole Balancing Without Velocity

Inputs

DPNV Solutions Are Compact

Harder DPNV (0.3m short pole) solution

Visualizing Speciation

Next Class: More NEAT

• Implementation issues• Where NEAT can be changed• Areas for advancement• Issues in applying NEAT (e.g. sensors and

outputs)

Homework due 2/15/05: Working domain and phenotype code. Turn in summary, code, and examples demonstrating how it works.

Evolving a Roving Eye for Go by Kenneth O. Stanley and Risto Miikkulainen (2004) Neuroevolution of an Automobile Crash Warning System by Kenneth O. Stanley and Risto Miikkulainen (2005)

Project Milestones (25% of grade)

• 2/6: Initial proposal and project description• 2/15: Domain and phenotype code and examples• 2/27: Genes and Genotype to Phenotype mapping • 3/8: Genetic operators all working• 3/27: Population level and main loop working• 4/10: Final project and presentation due (75% of grade)