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Design and Analysis of Learning Classifier Systems A Probabilistic Approach [Paperback]

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  • Category: Books (Mathematics)
  • Author:  Drugowitsch, Jan
  • Author:  Drugowitsch, Jan
  • ISBN-10:  3642098614
  • ISBN-10:  3642098614
  • ISBN-13:  9783642098611
  • ISBN-13:  9783642098611
  • Publisher:  Springer
  • Publisher:  Springer
  • Binding:  Paperback
  • Binding:  Paperback
  • Pub Date:  01-Feb-2010
  • Pub Date:  01-Feb-2010
  • SKU:  3642098614-11-SPRI
  • SKU:  3642098614-11-SPRI
  • Item ID: 100755398
  • List Price: $109.99
  • Seller: ShopSpell
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  • Delivery by: Jul 03 to Jul 05
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This book is probably best summarized as providing a principled foundation for Learning Classi?er Systems. Something is happening in LCS, and particularly XCS and its variants that clearly often produces good results. Jan Drug- itsch wishes to understand this from a broader machine learning perspective and thereby perhaps to improve the systems. His approach centers on choosing a statistical de?nition  derived from machine learning  of a good set of cl- si?ers, based on a model according to which such a set represents the data. For an illustration of this approach, he designs the model to be close to XCS, and tests it by evolving a set of classi?ers using that de?nition as a ?tness criterion, seeing ifthe setprovidesa goodsolutionto twodi?erent function approximation problems. It appears to, meaning that in some sense his de?nition of good set of classi?ers (also, in his terms, a good model structure) captures the essence, in machine learning terms, of what XCS is doing. In the process of designing the model, the author describes its components and their training in clear detail and links it to currently used LCS, giving rise to recommendations for how those LCS can directly gain from the design of the model and its probabilistic formulation. The seeming complexity of evaluating the quality ofa set ofclassi?ersis alleviatedby giving analgorithmicdescription of how to do it, which is carried out via a simple Pittsburgh-style LCS.

This book provides a comprehensive introduction to the design and analysis of Learning Classifier Systems (LCS) from the perspective of machine learning. It advances the analysis of existing LCS as well as puts forward the design of new LCS.

This book is probably best summarized as providing a principled foundation for Learning Classi?er Systems. Something is happening in LCS, and particularly XCS and its variants that clearly often produces good results. Jan Drug- itsch wishes to understand this from a broader machinel3Ä
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