Knowledge Representation in Learning Classifier Systems: A Review
Farzaneh Shoeleh, Mahshid Majd, Ali Hamzeh, Sattar Hashemi

TL;DR
This review paper comprehensively analyzes various knowledge representation techniques in learning classifier systems, especially XCS, highlighting their impact on system efficiency, generalization, and problem space partitioning.
Contribution
It categorizes and compares existing knowledge representation methods in LCS, providing guidelines for selecting suitable techniques and identifying future research directions.
Findings
Different techniques effectively partition the problem space.
Comparative analysis highlights strengths and weaknesses of each method.
Guidelines assist researchers in choosing appropriate representations.
Abstract
Knowledge representation is a key component to the success of all rule based systems including learning classifier systems (LCSs). This component brings insight into how to partition the problem space what in turn seeks prominent role in generalization capacity of the system as a whole. Recently, knowledge representation component has received great deal of attention within data mining communities due to its impacts on rule based systems in terms of efficiency and efficacy. The current work is an attempt to find a comprehensive and yet elaborate view into the existing knowledge representation techniques in LCS domain in general and XCS in specific. To achieve the objectives, knowledge representation techniques are grouped into different categories based on the classification approach in which they are incorporated. In each category, the underlying rule representation schema and the…
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Taxonomy
TopicsEvolutionary Algorithms and Applications · Metaheuristic Optimization Algorithms Research · Fuzzy Logic and Control Systems
