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Evaluation of Rule-Based Learning and Feature Selection Approaches For Classification
2019
Imperial College Computing Student Workshop
Feature selection is typically employed before or in conjunction with classification algorithms to reduce the feature dimensionality and improve the classification performance, as well as reduce processing time. While particular approaches have been developed for feature selection, such as filter and wrapper approaches, some algorithms perform feature selection through their learning strategy. In this paper, we are investigating the effect of the implicit feature selection of the PRISM
doi:10.4230/oasics.iccsw.2018.6
dblp:conf/iccsw/ChiromaC018
fatcat:wzmvpqgzsjdhxmpkalmvofmsga