Optimal Randomness in Swarm-Based Search
May 07, 2019 ยท Declared Dead ยท ๐ Mathematics
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Authors
Jiamin Wei, YangQuan Chen, Yongguang Yu, Yuquan Chen
arXiv ID
1905.02776
Category
cs.NE: Neural & Evolutionary
Citations
33
Venue
Mathematics
Last Checked
3 months ago
Abstract
Lรฉvy flights is a random walk where the step-lengths have a probability distribution that is heavy-tailed. It has been shown that Lรฉvy flights can maximize the efficiency of resource searching in uncertain environments, and also movements of many foragers and wandering animals have been shown to follow a Lรฉvy distribution. The reason mainly comes from that the Lรฉvy distribution, has an infinite second moment, and hence is more likely to generate an offspring that is farther away from its parent. However, the investigation into the efficiency of other different heavy-tailed probability distributions in swarm-based searches is still insufficient up to now. For swarm-based search algorithms, randomness plays a significant role in both exploration and exploitation, or diversification and intensification. Therefore, it's necessary to discuss the optimal randomness in swarm-based search algorithms. In this study, CS is taken as a representative method of swarm-based optimization algorithms, and the results can be generalized to other swarm-based search algorithms. In this paper, four different types of commonly used heavy-tailed distributions, including Mittag-Leffler distribution, Pareto distribution, Cauchy distribution, and Weibull distribution, are considered to enhance the searching ability of CS. Then four novel CS algorithms are proposed and experiments are carried out on 20 benchmark functions to compare their searching performances. Finally, the proposed methods are used to system identification to demonstrate the effectiveness.
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