New feature selection paradigm based on hyper-heuristic technique

Volume: 98, Pages: 14 - 37
Published: Oct 1, 2021
Abstract
Feature selection (FS) is a crucial step for effective data mining since it has largest effect on improving the performance of classifiers. This is achieved by removing the irrelevant features and using only the relevant features. Many metaheuristic approaches exist in the literature in attempt to address this problem. The performance of these approaches differ based on the settings of a number of factors including the use of chaotic maps,...
Paper Details
Title
New feature selection paradigm based on hyper-heuristic technique
Published Date
Oct 1, 2021
Volume
98
Pages
14 - 37
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