2022
DOI: 10.1007/s42979-022-01060-w
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Mechanisms to Alleviate Over-Generalization in XCS for Continuous-Valued Input Spaces

Abstract: In the field of rule-based approaches to Machine Learning, the XCS classifier system (XCS) is a well-known representative of the learning classifier systems family. By using a genetic algorithm (GA), the XCS aims at forming rules or so-called classifiers which are as general as possible to achieve an optimal performance level. A too high generalization pressure may lead to over-general classifiers degrading the performance of XCS. To date, no method exists for XCS for real-valued input spaces (XCSR) and XCS fo… Show more

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Cited by 6 publications
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