This paper presents an investigation into exploiting the population-based nature of learning classifier systems (LCSs) for their use within highly parallel systems. In particular, the use of simple payoff and accuracy-based LCSs within the ensemble machine approach is examined. Results indicate that inclusion of a rule migration mechanism inspired by parallel genetic algorithms is an effective way to improve learning speed in comparison to equivalent single systems. Presentation of a mechanism which exploits the underlying niche-based generalization mechanism of accuracy-based systems is then shown to further improve their performance, particularly, as task complexity increases. This is not found to be the case for payoff-based systems. Fin...
Learning Classifier Systems (LCSs) are rule-based systems that automatically build their rule set so...
Evolutionary computational techniques have had limited capabilities in solving large-scale problems,...
It is well known that standard learning classifier systems, when applied to many different domains, ...
This paper presents an investigation into exploiting the population-based nature of learning classif...
This paper presents an investigation into exploiting the population-based nature of learning classif...
Learning Classifier Systems (LCS) are a method of evolving compact rule-sets using reinforcement lea...
Classifier systems are massively parallel, message-passing, rule-based systems that learn through cr...
Classifier systems are highly parallel, rule-based learning systems which are designed to continuous...
This paper describes two classifier systems that learn. These are rule-based systems that use geneti...
Classification is an active topic of Machine Learning. The most recent achievements in this domain s...
Learning Classifier Systems (LCSs) have demonstrated their classification capability by employing a ...
In this paper we study how to solve classification problems in computing systems that consist of dis...
Learning and adaptation are essential capabilities for intelligent artificial systems that operate a...
It is well known that standard learning classifier systems, when applied to many different domains, ...
Learning classifier systems (LCSs) have been successfully adapted to real-world domains with the cla...
Learning Classifier Systems (LCSs) are rule-based systems that automatically build their rule set so...
Evolutionary computational techniques have had limited capabilities in solving large-scale problems,...
It is well known that standard learning classifier systems, when applied to many different domains, ...
This paper presents an investigation into exploiting the population-based nature of learning classif...
This paper presents an investigation into exploiting the population-based nature of learning classif...
Learning Classifier Systems (LCS) are a method of evolving compact rule-sets using reinforcement lea...
Classifier systems are massively parallel, message-passing, rule-based systems that learn through cr...
Classifier systems are highly parallel, rule-based learning systems which are designed to continuous...
This paper describes two classifier systems that learn. These are rule-based systems that use geneti...
Classification is an active topic of Machine Learning. The most recent achievements in this domain s...
Learning Classifier Systems (LCSs) have demonstrated their classification capability by employing a ...
In this paper we study how to solve classification problems in computing systems that consist of dis...
Learning and adaptation are essential capabilities for intelligent artificial systems that operate a...
It is well known that standard learning classifier systems, when applied to many different domains, ...
Learning classifier systems (LCSs) have been successfully adapted to real-world domains with the cla...
Learning Classifier Systems (LCSs) are rule-based systems that automatically build their rule set so...
Evolutionary computational techniques have had limited capabilities in solving large-scale problems,...
It is well known that standard learning classifier systems, when applied to many different domains, ...