We analyze XCS learning capabilities in stochastic environments where the result of agent actions can be uncertain. We show that XCS can cope when the degree of uncertainty is limited. We propose an extension to XCS, called XCSm, that can learn optimal solutions for higher degrees of uncertainty. We test XCSm when the uncertainty affects the whole environment and when the uncertainty is limited to some areas. Finally, we show that XCSm is a proper extension of XCS, in that it coincides with it when it is applied to deterministic environments
The XCS classifier system evolves solutions that represent complete mappings from state-action pairs...
The authors consider the fundamental problem of nding good policies in uncertain models. It is dem...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
We analyze XCS learning capabilities in stochastic environments where the result of agent actions ca...
Wilson's recent XCS classifier system forms complete mappings of the payoff environment in the ...
The XCS classifier system represents a major advance in learning classifier systems research because...
We investigate Learning Classifier Systems for online environments that consist of real-valued stat...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...
We investigate Learning Classifier Systems for online environments that consist of real-valued state...
XCS is a new kind of learning classifier system that differs from the traditional one primarily in i...
Wilson's (1994) bit-register memory scheme was incorporated into the XCS classifier system and inves...
The XCS classifier system evolves solutions that represent complete mappings from state-action pairs...
The authors consider the fundamental problem of nding good policies in uncertain models. It is dem...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...
We analyze XCS learning capabilities in stochastic environments where the result of agent actions ca...
Wilson's recent XCS classifier system forms complete mappings of the payoff environment in the ...
The XCS classifier system represents a major advance in learning classifier systems research because...
We investigate Learning Classifier Systems for online environments that consist of real-valued stat...
Takes initial steps toward a theory of generalization and learning in the learning classifier system...
We investigate Learning Classifier Systems for online environments that consist of real-valued state...
XCS is a new kind of learning classifier system that differs from the traditional one primarily in i...
Wilson's (1994) bit-register memory scheme was incorporated into the XCS classifier system and inves...
The XCS classifier system evolves solutions that represent complete mappings from state-action pairs...
The authors consider the fundamental problem of nding good policies in uncertain models. It is dem...
Michigan-style learning classifier systems iteratively evolve a distributed solution to a problem in...