Rule-Based Evolutionary Online Learning Systems von Martin V. Butz | A Principled Approach to LCS Analysis and Design | ISBN 9783642064777

Rule-Based Evolutionary Online Learning Systems

A Principled Approach to LCS Analysis and Design

von Martin V. Butz
Buchcover Rule-Based Evolutionary Online Learning Systems | Martin V. Butz | EAN 9783642064777 | ISBN 3-642-06477-9 | ISBN 978-3-642-06477-7

Rule-Based Evolutionary Online Learning Systems

A Principled Approach to LCS Analysis and Design

von Martin V. Butz
Rule-basedevolutionaryonlinelearningsystems, oftenreferredtoasMichig- style learning classi? er systems (LCSs), were proposed nearly thirty years ago (Holland, 1976; Holland, 1977) originally calling them cognitive systems. LCSs combine the strength of reinforcement learning with the generali- tion capabilities of genetic algorithms promising a ? exible, online general- ing, solely reinforcement dependent learning system. However, despite several initial successful applications of LCSs and their interesting relations with a- mal learning and cognition, understanding of the systems remained somewhat obscured. Questions concerning learning complexity or convergence remained unanswered. Performance in di? erent problem types, problem structures, c- ceptspaces, andhypothesisspacesstayednearlyunpredictable. Thisbookhas the following three major objectives: (1) to establish a facetwise theory - proachforLCSsthatpromotessystemanalysis, understanding, anddesign;(2) to analyze, evaluate, and enhance the XCS classi? er system (Wilson, 1995) by the means of the facetwise approach establishing a fundamental XCS learning theory; (3) to identify both the major advantages of an LCS-based learning approach as well as the most promising potential application areas. Achieving these three objectives leads to a rigorous understanding of LCS functioning that enables the successful application of LCSs to diverse problem types and problem domains. The quantitative analysis of XCS shows that the inter- tive, evolutionary-based online learning mechanism works machine learning competitively yielding a low-order polynomial learning complexity. Moreover, the facetwise analysis approach facilitates the successful design of more - vanced LCSs including Holland’s originally envisioned cognitivesystems. Martin V.