Title
Evolved cooperation and emergent communication structures in learning classifier based organic computing systems
Abstract
In this paper we look at systems consisting of many autonomous components or agents which have only limited amount of resources (e.g. memory) but are able to communicate with each other. The aim of these systems is to solve classification problems (usually to classify binary strings). We incorporate a pittsburgh style learning classifier system into the agents and extend its possible actions by actions for passing the classification requests to other agents. We show that the system is able to overcome the limited resources of its parts by evolving cooperation between them. We take a deeper look at the structure of the generated rule sets and investigate the occurring communication patterns.
Year
DOI
Venue
2009
10.1145/1570256.1570373
GECCO (Companion)
Keywords
Field
DocType
communication pattern,pittsburgh style,emergent communication structure,binary string,deeper look,autonomous component,evolved cooperation,limited resource,classification request,organic computing system,classification problem,classifier system,limited amount,genetic algorithm,cooperation,community structure,coevolution,learning classifier system,multi agent system
Coevolution,Binary strings,Computer science,Multi-agent system,Artificial intelligence,Organic computing,Classifier (linguistics),Genetic algorithm,Machine learning,Learning classifier system
Conference
Citations 
PageRank 
References 
1
0.36
15
Authors
2
Name
Order
Citations
PageRank
Alexander Scheidler118216.52
Martin Middendorf21334161.45