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Article type: Research Article
Authors: Chen, Yana; b | Dong, Weizhenb | Hu, Xiaochunc; d; *
Affiliations: [a] School of Business Administration, Guangxi University, Nanning 530000, China | [b] School of Computer and Electronic Information Science, Guangxi University, Guangxi 530004, China | [c] College of Big Data and Artificial Intelligence, Guangxi University of Finance and Economics, Guangxi 530007, China | [d] Guangxi Key Laboratory of Finance and Economics Big Data, Nanning, Guangxi 530007, China
Correspondence: [*] Corresponding author. E-mail: hxch@gxufe.edu.cn.
Abstract: Swarm intelligence optimization algorithm has been proved to perform well in the field of parameter optimization. In order to further improve the performance of intelligent optimization algorithm, this paper proposes an improved and adaptive tunicate swarm algorithm (IMATSA) based on tunicate swarm algorithm (TSA). IMATSA improves TSA in the following four aspects: population diversity, local search convergence speed, jumping out of local optimal position, and balancing global and local search. Firstly, IMATSA adopts Tent map and quadratic interpolation to initialize population and enhance the diversity. Secondly, IMATSA uses Golden-Sine algorithm to accelerate the convergence of local search. Thirdly, in the process of global development, IMATSA adopts Levy flight and the improved Gauss disturbance method to adaptively improves and coordinates the ability of global development and local search. Then, this paper verifies the performance of IMATSA based on 14 benchmark functions experiment, ablation experiment, parameter optimization experiments of Support Vector Machine (SVM) and Gradient Boosting Decision Tree (GBDT), Wilcoxon signed rank test and image multi-threshold segmentation experiment with the performance metrics are convergence speed, convergence value, significance level P-value, Peak Signal-to-Noise Ratio (PSNR) and Standard Deviation (STD). Experimental results show that IMATSA performs better in three kinds of benchmark functions; each component of IMATSA has a positive effect on the performance; IMATSA performs better in parameter optimization experiments of SVM experiment and GBDT; there is significant difference between IMATSA and other algorithms by Wilcoxon signed rank test; in image segmentation, the performance is directly proportional to the number of thresholds, and compared with other algorithms, IMATSA has better comprehensive performance.
Keywords: Intelligent optimization algorithm, optimization, tent map, quadratic interpolation, Golden-Sine, levy flight, improved Gauss disturbance
DOI: 10.3233/AIC-220093
Journal: AI Communications, vol. 37, no. 1, pp. 1-22, 2024
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