Harmony Search Algorithm Based on Dual-Memory Dynamic Search and Its Application on Data Clustering

Jinglin Wang;Haibin Ouyang;Zhiyu Zhou;Steven Li
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Abstract

Harmony Search (HS) algorithm is highly effective in solving a wide range of real-world engineering optimization problems. However, it still has the problems such as being prone to local optima, low optimization accuracy, and low search efficiency. To address the limitations of the HS algorithm, a novel approach called the Dual-Memory Dynamic Search Harmony Search (DMDS-HS) algorithm is introduced. The main innovations of this algorithm are as follows: Firstly, a dual-memory structure is introduced to rank and hierarchically organize the harmonies in the harmony memory, creating an effective and selectable trust region to reduce approach blind searching. Furthermore, the trust region is dynamically adjusted to improve the convergence of the algorithm while maintaining its global search capability. Secondly, to boost the algorithm's convergence speed, a phased dynamic convergence domain concept is introduced to strategically devise a global random search strategy. Lastly, the algorithm constructs an adaptive parameter adjustment strategy to adjust the usage probability of the algorithm's search strategies, which aim to rationalize the abilities of exploration and exploitation of the algorithm. The results tested on the Computational Experiment Competition on 2017 (CEC2017) test function set show that DMDS-HS outperforms the other nine HS algorithms and the other four state-of-the-art algorithms in terms of diversity, freedom from local optima, and solution accuracy. In addition, applying DMDS-HS to data clustering problems, the results show that it exhibits clustering performance that exceeds the other seven classical clustering algorithms, which verifies the effectiveness and reliability of DMDS-HS in solving complex data clustering problems.
基于双内存动态搜索的和谐搜索算法及其在数据聚类中的应用
和谐搜索(HS)算法在解决各种实际工程优化问题时非常有效。然而,它仍然存在容易出现局部最优、优化精度低和搜索效率低等问题。为了解决 HS 算法的局限性,我们引入了一种名为双内存动态搜索和谐搜索(DMDS-HS)算法的新方法。该算法的主要创新点如下:首先,引入双内存结构,对和谐内存中的和谐音进行排序和分层组织,创建一个有效和可选择的信任区域,以减少盲目搜索。此外,在保持全局搜索能力的同时,动态调整信任区域以提高算法的收敛性。其次,为了提高算法的收敛速度,引入了分阶段动态收敛域概念,战略性地设计了全局随机搜索策略。最后,该算法构建了自适应参数调整策略,以调整算法搜索策略的使用概率,从而使算法的探索和利用能力更加合理。在 2017 年计算实验竞赛(CEC2017)测试函数集上测试的结果表明,DMDS-HS 在多样性、无局部最优和解的准确性方面优于其他九种 HS 算法和其他四种最先进的算法。此外,将DMDS-HS应用于数据聚类问题,结果表明其聚类性能超过了其他七种经典聚类算法,验证了DMDS-HS在解决复杂数据聚类问题时的有效性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.80
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