A Modified Mean Gray Wolf Optimization Approach for Benchmark and Biomedical Problems

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Abstract

A modified variant of gray wolf optimization algorithm, namely, mean gray wolf optimization algorithm has been developed by modifying the position update (encircling behavior) equations of gray wolf optimization algorithm. The proposed variant has been tested on 23 standard benchmark well-known test functions (unimodal, multimodal, and fixed-dimension multimodal), and the performance of modified variant has been compared with particle swarm optimization and gray wolf optimization. Proposed algorithm has also been applied to the classification of 5 data sets to check feasibility of the modified variant. The results obtained are compared with many other meta-heuristic approaches, ie, gray wolf optimization, particle swarm optimization, population-based incremental learning, ant colony optimization, etc. The results show that the performance of modified variant is able to find best solutions in terms of high level of accuracy in classification and improved local optima avoidance.

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Singh, N., & Singh, S. B. (2017). A Modified Mean Gray Wolf Optimization Approach for Benchmark and Biomedical Problems. Evolutionary Bioinformatics, 13. https://doi.org/10.1177/1176934317729413

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