Feature selection is a process that provides model extraction by specifying necessary or related features and improves generalization. The artificialbeecolony (ABC) algorithm is one of the most popular optimization ...
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Feature selection is a process that provides model extraction by specifying necessary or related features and improves generalization. The artificialbeecolony (ABC) algorithm is one of the most popular optimization algorithms inspired on swarm intelligence developed by simulating the search behavior of honey bees. artificialbeecolonyprogramming (ABCP) is a recently proposed high level automatic programming technique for a Symbolic Regression (SR) problem based on the ABC algorithm. In this paper, a new feature selection method based on ABCP is proposed, multihive ABCP (MHABCP) for high-dimensional SR problems. The learning ability and generalization performance of the proposed MHABCP is investigated using synthetic and real high-dimensional SR datasets and is compared with basic ABCP and GP automatic programming methods. Experimental results show that MHABCP has better performance choosing relevant features in high dimensional SR problems and generalization than other methods. (C) 2019 Elsevier B.V. All rights reserved.
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