Title of article :
An Efficient XCS-based Algorithm for Learning Classifier Systems in Real Environments
Author/Authors :
Yousefi ، Ali Department of Computer Engineering - Islamic Azad University, Science and Research Branch , Badie ، Kambiz Content E-Services Research Group - IT Research Faculty - ICT Research Institute , Ebadzadeh ، Mohammad Mehdi Department of Computer Engineering - Amirkabir University of Technology , Sharifi ، Arash Department of Computer Engineering - Islamic Azad University, Science and Research Branch
From page :
13
To page :
27
Abstract :
Recently, learning classifier systems are used to control physical robots, sensory robots, and intelligent rescue systems. The most important challenge in these systems, which are models of real environments, is its non-markov quality. Therefore, it is necessary to use memory to store system states in order to make decisions based on a chain of previous states. In this research, a memory-based XCS is proposed to help use more effective rules in classifier by identifying efficient rules. The proposed model was implemented on five important maze maps and led to a reduction in the number of steps to reach the goal and also an increase in the number of successes in reaching the goal in these maps.
Keywords :
learning classifier systems (LCS) , XCS algorithm , identification of cycle and overlapping
Journal title :
Journal of Artificial Intelligence and Data Mining
Journal title :
Journal of Artificial Intelligence and Data Mining
Record number :
2738806
Link To Document :
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