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

机译:基准和生物医学问题的改进平均灰狼优化方法

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摘要

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.
机译:通过修改灰狼优化算法的位置更新(包围行为)方程,开发了灰狼优化算法的改进变体,即均值灰狼优化算法。拟议的变体已经在23个标准基准众所周知的测试功能(单峰,多峰和固定维多峰)上进行了测试,并且将变体的性能与粒子群优化和灰狼优化进行了比较。提议的算法也已应用于5个数据集的分类,以检查修改后的变体的可行性。将获得的结果与其他许多元启发式方法进行比较,例如灰太狼优化,粒子群优化,基于人口的增量学习,蚁群优化等。结果表明,改进的变体的性能能够找到最佳解决方案在分类中具有很高的准确性,并且避免了局部优化。

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