Literature DB >> 14558911

Accuracy-based learning classifier systems: models, analysis and applications to classification tasks.

Ester Bernadó-Mansilla1, Josep M Garrell-Guiu.   

Abstract

Recently, Learning Classifier Systems (LCS) and particularly XCS have arisen as promising methods for classification tasks and data mining. This paper investigates two models of accuracy-based learning classifier systems on different types of classification problems. Departing from XCS, we analyze the evolution of a complete action map as a knowledge representation. We propose an alternative, UCS, which evolves a best action map more efficiently. We also investigate how the fitness pressure guides the search towards accurate classifiers. While XCS bases fitness on a reinforcement learning scheme, UCS defines fitness from a supervised learning scheme. We find significant differences in how the fitness pressure leads towards accuracy, and suggest the use of a supervised approach specially for multi-class problems and problems with unbalanced classes. We also investigate the complexity factors which arise in each type of accuracy-based LCS. We provide a model on the learning complexity of LCS which is based on the representative examples given to the system. The results and observations are also extended to a set of real world classification problems, where accuracy-based LCS are shown to perform competitively with respect to other learning algorithms. The work presents an extended analysis of accuracy-based LCS, gives insight into the understanding of the LCS dynamics, and suggests open issues for further improvement of LCS on classification tasks.

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Year:  2003        PMID: 14558911     DOI: 10.1162/106365603322365289

Source DB:  PubMed          Journal:  Evol Comput        ISSN: 1063-6560            Impact factor:   3.277


  5 in total

1.  A Multi-Core Parallelization Strategy for Statistical Significance Testing in Learning Classifier Systems.

Authors:  James Rudd; Jason H Moore; Ryan J Urbanowicz
Journal:  Evol Intell       Date:  2013-11

2.  An Analysis Pipeline with Statistical and Visualization-Guided Knowledge Discovery for Michigan-Style Learning Classifier Systems.

Authors:  Ryan J Urbanowicz; Ambrose Granizo-Mackenzie; Jason H Moore
Journal:  IEEE Comput Intell Mag       Date:  2012-11       Impact factor: 11.356

3.  ExSTraCS 2.0: Description and Evaluation of a Scalable Learning Classifier System.

Authors:  Ryan J Urbanowicz; Jason H Moore
Journal:  Evol Intell       Date:  2015-04-03

4.  Predicting the difficulty of pure, strict, epistatic models: metrics for simulated model selection.

Authors:  Ryan J Urbanowicz; Jeff Kiralis; Jonathan M Fisher; Jason H Moore
Journal:  BioData Min       Date:  2012-09-26       Impact factor: 2.522

5.  Role of genetic heterogeneity and epistasis in bladder cancer susceptibility and outcome: a learning classifier system approach.

Authors:  Ryan John Urbanowicz; Angeline S Andrew; Margaret Rita Karagas; Jason H Moore
Journal:  J Am Med Inform Assoc       Date:  2013-02-26       Impact factor: 4.497

  5 in total

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