4.5 Article

A parameter independent fuzzy weighted k-Nearest neighbor classifier

Journal

PATTERN RECOGNITION LETTERS
Volume 101, Issue -, Pages 80-87

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.patrec.2017.11.003

Keywords

Fuzzy k Nearest neighbor; Parameter adaptation; Feature weighting; Evolutionary optimization; Differential evolution

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Unlike the canonical k-Nearest Neighbor classifier (kNN) which treat the neighbors equally, the Fuzzy k-Nearest Neighbor (FkNN) classifier imposes a weight on each of the k nearest neighbors based on their distances from the query point, by using a fuzzy membership function. FkNN though improves the performance of kNN, requires optimizing additional data dependent parameters other than k. Furthermore, FkNN does not consider the effect of those representative features of a data point which may be noisy, redundant, and may not contain useful information to distinctly identify a specific class. We attempt to address both of these issues in the current study by proposing a Parameter Independent Fuzzy class-specific Feature Weighted k-Nearest Neighbor (PIFW-kNN) classifier. PIFW-kNN formulates the issues of choosing a suitable value of k and a set of class dependent optimum weights for the features as a single-objective continuous non-convex optimization problem. We solve this problem by using a very competitive variant of Differential Evolution (DE), called Success-History based Adaptive DE (SHADE). We perform extensive experiments to demonstrate the improved accuracy of PIFW-kNN compared to the other state-of-the-art classifiers. (c) 2017 Elsevier B.V. All rights reserved.

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