构建高效聚类分析的混合元启发式优化算法

Q3 Decision Sciences
D. P. Kumar, B. J. Sowmya, A. Kanavalli, Varun Cornelio, Jaison Pravith Dsouza, Wasim Memon, P. Prashanth
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引用次数: 0

摘要

自然启发算法是元启发式的一个相对较新的领域,用于优化聚类未标记数据的过程。近年来,人们一直在追求这些算法的混合,以结合多种算法的优点来提高聚类效率,并克服它们的缺点。在本文中,我们讨论了一种新的杂交概念,我们将香草蝙蝠和香草鲸鱼算法的探索和开发过程结合起来,开发了一种混合元启发式算法。我们将该算法与现有的香草元启发式算法(包括香草蝙蝠和鲸鱼算法)进行了测试。这些测试是在几个单目标CEC函数上进行的,以比较收敛速度到最小坐标。在几个真实和人工聚类数据集上进行了额外的测试,以比较收敛速度和聚类质量。最后,我们在真实案例中使用未标记的聚类数据(即信用卡欺诈检测数据集和COVID-19诊断数据集)对混合算法进行了测试,最后讨论了这项工作的意义、局限性和未来的范围。©2023 Inderscience Enterprises Ltd。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building a hybridised meta-heuristic optimisation algorithm for efficient cluster analysis
Nature-inspired algorithms are a relatively recent field of meta-heuristics introduced to optimise the process of clustering unlabelled data. In recent years, hybridisation of these algorithms has been pursued to combine the best of multiple algorithms for more efficient clustering and overcoming their drawbacks. In this paper, we discuss a novel hybridisation concept where we combine the exploration and exploitation processes of the vanilla bat and vanilla whale algorithm to develop a hybrid meta-heuristic algorithm. We test this algorithm against the existing vanilla meta-heuristic algorithms, including the vanilla bat and whale algorithm. These tests are performed on several single objective CEC functions to compare convergence speed to the minima coordinates. Additional tests are performed on several real-life and artificial clustering datasets to compare convergence speeds and clustering quality. Finally, we test the hybrid on real-world cases with unlabelled clustering data, namely a credit card fraud detection dataset, and a COVID-19 diagnosis dataset, and end with a discussion on the significance of the work, its limitations and future scope. © 2023 Inderscience Enterprises Ltd.
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来源期刊
International Journal of Business Intelligence and Data Mining
International Journal of Business Intelligence and Data Mining Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.50
自引率
0.00%
发文量
89
期刊介绍: IJBIDM provides a forum for state-of-the-art developments and research as well as current innovative activities in business intelligence, data analysis and mining. Intelligent data analysis provides powerful and effective tools for problem solving in a variety of business modelling tasks. IJBIDM highlights intelligent techniques used for business modelling, including all areas of data visualisation, data pre-processing (fusion, editing, transformation, filtering, sampling), data engineering, data mining techniques, tools and applications, neurocomputing, evolutionary computing, fuzzy techniques, expert systems, knowledge filtering, and post-processing. Topics covered include Data extraction/reporting/cleaning/pre-processing OLAP, decision analysis, causal modelling Reasoning under uncertainty, noise in data Business intelligence cycle Model specification/selection/estimation Web technology, mining, agents Fuzzy, neural, evolutionary approaches Genetic algorithms, machine learning, expert/hybrid systems Bayesian inference, bootstrap, randomisation Exploratory/automated data analysis Knowledge-based analysis, statistical pattern recognition Data mining algorithms/processes Classification, projection, regression, optimisation clustering Information extraction/retrieval, human-computer interaction Multivariate data visualisation, tools.
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