Symmetry (Nov 2019)

Feature Selection Based on Swallow Swarm Optimization for Fuzzy Classification

  • Ilya Hodashinsky,
  • Konstantin Sarin,
  • Alexander Shelupanov,
  • Artem Slezkin

DOI
https://doi.org/10.3390/sym11111423
Journal volume & issue
Vol. 11, no. 11
p. 1423

Abstract

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This paper concerns several important topics of the Symmetry journal, namely, pattern recognition, computer-aided design, diversity and similarity. We also take advantage of the symmetric structure of a membership function. Searching for the (sub) optimal subset of features is an NP-hard problem. In this paper, a binary swallow swarm optimization (BSSO) algorithm for feature selection is proposed. To solve the classification problem, we use a fuzzy rule-based classifier. To evaluate the feature selection performance of our method, BSSO is compared to induction without feature selection and some similar algorithms on well-known benchmark datasets. Experimental results show the promising behavior of the proposed method in the optimal selection of features.

Keywords