Feature Selection Algorithms: Literature Review
نویسنده
چکیده
Feature selection is a term usually use in data mining to demonstrate the tools and techniques available for reducing inputs to a convenient size for processing and analysis. In this paper authors has reviewed the literature of feature selection algorithms such as well known attributes selection methods of FCBF, ReliefF, SVM-RFE, Random selection. This review of literature focuses on how feature selection techniques are used for different dataset.
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