4.7 Article

A multi-objective optimization algorithm for feature selection problems

Journal

ENGINEERING WITH COMPUTERS
Volume 38, Issue SUPPL 3, Pages 1845-1863

Publisher

SPRINGER
DOI: 10.1007/s00366-021-01369-9

Keywords

Feature selection; Harris hawks optimization; Fruitfly optimization algorithm; Multiobjective; Bonferroni– Holm; Family-wise error rate

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Feature selection is a critical step in data mining, with machine learning algorithms playing a crucial role in performance improvement. This paper proposed three different solutions for FS using HHO, FOA, and a hybrid algorithm MOHHOFOA, which were tested on 15 standard data sets. Results showed promising performance of the proposed solutions on the data sets.
Feature selection (FS) is a critical step in data mining, and machine learning algorithms play a crucial role in algorithms performance. It reduces the processing time and accuracy of the categories. In this paper, three different solutions are proposed to FS. In the first solution, the Harris Hawks Optimization (HHO) algorithm has been multiplied, and in the second solution, the Fruitfly Optimization Algorithm (FOA) has been multiplied, and in the third solution, these two solutions are hydride and are named MOHHOFOA. The results were tested with MOPSO, NSGA-II, BGWOPSOFS and B-MOABC algorithms for FS on 15 standard data sets with mean, best, worst, standard deviation (STD) criteria. The Wilcoxon statistical test was also used with a significance level of 5% and the Bonferroni-Holm method to control the family-wise error rate. The results are shown in the Pareto front charts, indicating that the proposed solutions' performance on the data set is promising.

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