Towards Principled Feature Selection: Relevancy, Filters and Wrappers
نویسندگان
چکیده
منابع مشابه
A Comprehensive Comparison on Evolutionary Feature Selection Approaches to Classification
Feature selection is an important data preprocessing step in machine learning and data mining, such as classification tasks. Research on feature selection has been extensively conducted for more than fifty years and different types of approaches have been proposed, which include wrapper approaches or filter approaches, and single objective approaches or multi-objective approaches. However, the ...
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