In this report, we show how to prune the population size of the Learning Classifier System XCS for complex problems. We say a problem is complex, when the number of specified bits of the optimal start classifiers (the prob-lem dimension) is not constant. First, we derive how to estimate an equiv-alent problem dimension for complex problems based on the optimal start classifiers. With the equivalent problem dimension, we calculate the optimal maximum population size just like for regular problems, which has already been done. We empirically validate our results. Furthermore, we introduce a subsumption method to reduce the number of classifiers. In contrast to existing methods, we subsume the classifiers after the learning process, so subsumi...
The XCS classifier system represents a major advance in learning classifier systems research because...
Learning classifier systems (LCSs), an established evolutionary computation technique, are over 30 y...
Using evolutionary intelligence and machine learning techniques, a broad range of intelligent machin...
In this report, we show how to prune the population size of the Learning Classifier System XCS for c...
The main goal of the research direction is to extract building blocks of knowledge from a problem do...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...
XCS is the most popular type of Learning Classifier System, but setting optimum parameter values is ...
AbstractIt has been shown many times that the evolutionary online learning XCS classifier system is ...
Human beings have the ability to apply the domain knowledge learned from a smaller problem to more c...
The XCS classifier system has been successfully applied to various problem domains including datamin...
Wilson's recent XCS classifier system forms complete mappings of the payoff environment in the ...
Learning classifier systems (LCSs) originated from artificial cognitive systems research, but migrat...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
It has been shown empirically that the XCS classifier system solves typical classification problems ...
Learning Classifier Systems (LCSs), a 40-year-old technique, evolve interrogatable production rules....
The XCS classifier system represents a major advance in learning classifier systems research because...
Learning classifier systems (LCSs), an established evolutionary computation technique, are over 30 y...
Using evolutionary intelligence and machine learning techniques, a broad range of intelligent machin...
In this report, we show how to prune the population size of the Learning Classifier System XCS for c...
The main goal of the research direction is to extract building blocks of knowledge from a problem do...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...
XCS is the most popular type of Learning Classifier System, but setting optimum parameter values is ...
AbstractIt has been shown many times that the evolutionary online learning XCS classifier system is ...
Human beings have the ability to apply the domain knowledge learned from a smaller problem to more c...
The XCS classifier system has been successfully applied to various problem domains including datamin...
Wilson's recent XCS classifier system forms complete mappings of the payoff environment in the ...
Learning classifier systems (LCSs) originated from artificial cognitive systems research, but migrat...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
It has been shown empirically that the XCS classifier system solves typical classification problems ...
Learning Classifier Systems (LCSs), a 40-year-old technique, evolve interrogatable production rules....
The XCS classifier system represents a major advance in learning classifier systems research because...
Learning classifier systems (LCSs), an established evolutionary computation technique, are over 30 y...
Using evolutionary intelligence and machine learning techniques, a broad range of intelligent machin...