4.6 Article

Random Replacement Crisscross Butterfly Optimization Algorithm for Standard Evaluation of Overseas Chinese Associations

Journal

ELECTRONICS
Volume 11, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/electronics11071080

Keywords

butterfly optimization algorithm; random replacement; crisscross search; overseas Chinese associations; support vector machine

Funding

  1. phased research results of Research on the Formation and Cultivation Mechanism of Overseas Chinese's Home and Country Feelings from the Perspective of Embodiment Theory, emerging (intersecting) major project on philosophy and social sciences in Zhejiang P [22JCXK02ZD]
  2. phased research results of Research on the Mechanism of Contributions that Overseas Chinese Schools Make to Public Diplomacy, a 2021 Overseas Chinese Characteristic Research Project of Wenzhou University [WDQT21-YB008]

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The butterfly optimization algorithm (BOA) is a proposed swarm intelligence optimization algorithm that simulates the foraging behavior of butterflies. However, it has limitations such as slow convergence speed and low solution accuracy. To address this, two strategies are introduced: random replacement and crisscross search. In this study, a novel optimizer called random replacement crisscross butterfly optimization algorithm (RCCBOA) is proposed. Comparative experiments are conducted to evaluate the performance of RCCBOA, and it is combined with SVM and FS to construct a standardized model for overseas Chinese associations.
The butterfly optimization algorithm (BOA) is a swarm intelligence optimization algorithm proposed in 2019 that simulates the foraging behavior of butterflies. Similarly, the BOA itself has certain shortcomings, such as a slow convergence speed and low solution accuracy. To cope with these problems, two strategies are introduced to improve the performance of BOA. One is the random replacement strategy, which involves replacing the position of the current solution with that of the optimal solution and is used to increase the convergence speed. The other is the crisscross search strategy, which is utilized to trade off the capability of exploration and exploitation in BOA to remove local dilemmas whenever possible. In this case, we propose a novel optimizer named the random replacement crisscross butterfly optimization algorithm (RCCBOA). In order to evaluate the performance of RCCBOA, comparative experiments are conducted with another nine advanced algorithms on the IEEE CEC2014 function test set. Furthermore, RCCBOA is combined with support vector machine (SVM) and feature selection (FS)-namely, RCCBOA-SVM-FS-to attain a standardized construction model of overseas Chinese associations. It is found that the reasonableness of bylaws; the regularity of general meetings; and the right to elect, be elected, and vote are of importance to the planning and standardization of Chinese associations. Compared with other machine learning methods, the RCCBOA-SVM-FS model has an up to 95% accuracy when dealing with the normative prediction problem of overseas Chinese associations. Therefore, the constructed model is helpful for guiding the orderly and healthy development of overseas Chinese associations.

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