We investigate the performance of a learning classifier system in some simple multi-objective, multi-step maze problems, using both random and biased action-selection policies for exploration. Results show that the choice of action-selection policy can significantly affect the performance of the system in such environments. Further, this effect is directly related to population size, and we relate this finding to recent theoretical studies of learning classifier systems in single-step problems. © 2006 Massachusetts Institute of Technology
The accuracy-based XCS classifier system has been shown to solve typical data mining problems in a m...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...
We investigate the performance of a learning classifier system in some simple multi-objective, multi...
Learning classifier systems traditionally use genetic algorithms to facilitate rule discovery, where...
A reward mechanism is critical for a Reinforcement Learning agent to learn action policies from rewa...
Learning Classifier Systems (LCSs) have been widely used to tackle Reinforcement Learning (RL) probl...
The XCS classifier system is a rule-based evolutionary machine learning system. XCS evolves classifi...
The Learning Classifier System (LCS) and its descendant, XCS, are promising paradigms for machine le...
The real world is full of problems with multiple conflicting objectives. However, Reinforcement Lear...
Wilson's recent XCS classifier system forms complete mappings of the payoff environment in the ...
Using evolutionary intelligence and machine learning techniques, a broad range of intelligent machin...
© 2015, Springer-Verlag Berlin Heidelberg. The direction set by Wilson’s XCS is that modern Learning...
The accuracy-based XCS classifier system has been shown to solve typical data mining problems in a m...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...
We investigate the performance of a learning classifier system in some simple multi-objective, multi...
Learning classifier systems traditionally use genetic algorithms to facilitate rule discovery, where...
A reward mechanism is critical for a Reinforcement Learning agent to learn action policies from rewa...
Learning Classifier Systems (LCSs) have been widely used to tackle Reinforcement Learning (RL) probl...
The XCS classifier system is a rule-based evolutionary machine learning system. XCS evolves classifi...
The Learning Classifier System (LCS) and its descendant, XCS, are promising paradigms for machine le...
The real world is full of problems with multiple conflicting objectives. However, Reinforcement Lear...
Wilson's recent XCS classifier system forms complete mappings of the payoff environment in the ...
Using evolutionary intelligence and machine learning techniques, a broad range of intelligent machin...
© 2015, Springer-Verlag Berlin Heidelberg. The direction set by Wilson’s XCS is that modern Learning...
The accuracy-based XCS classifier system has been shown to solve typical data mining problems in a m...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...