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Single-Objective/Multiobjective Cat Swarm Optimization Clustering Analysis for Data Partition

机译:数据分区的单目标/多目标CAT Swarm优化聚类分析

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This article proposes single-objective/multiobjective cat swarm optimization clustering algorithms for data partition. The proposed methods use the cat swarm to search the optimal. The position of the cat tightly associates with the clustering centers and is updated by two submodes: the seeking mode and the tracing mode. The seeking mode uses the simulated annealing strategy to update the cat position at a probability. Inspired by the quantum theories, the tracing mode adopts the quantum model to update the cat position in the whole solution space. First, the single-objective method is proposed and adopts the cohesion of clustering as the objective function, in which the kernel method is applied. For considering more objective functions to reveal diverse aspects of data, the multiobjective method is proposed and adopts both the cohesion and the connectivity as the objective functions. The Pareto optimization method is applied to balance the objectives. In the experiments, three kinds of data sets are used to examine the effectiveness of the proposed methods, which are three synthetic data sets, four data sets from the UCI Machine Learning Repository, and a field data set. Experimental results verified that the proposed methods perform better than the traditional clustering algorithms, and the proposed multiobjective method has the highest accuracy. Note to Practitioners-This article presents single-objective/multiobjective cat swarm optimization clustering analysis methods for data partition. Through automatically extracting meaningful or useful classes, clustering analysis could help the practitioners or the intelligent devices find the specific meanings of data, natural data structure, the data relationships, or other characteristics. The proposed methods use the cat swarm to search the optimal clustering result. One or more criterion functions could be selected as the optimization objectives. The time complexity of the multiobjective type is higher than that of the single-objective type. Therefore, in the industrial field, engineers should choose the number of the optimization objectives based on the actual requirements. The proposed methods could be widely used into industrial applications to deal with complex data sets. Future research could consider some more progressive optimization schemes to improve the effectiveness.
机译:本文为数据分区提出了单目标/多目标CAT Swarm优化聚类算法。所提出的方法使用CAT Swarm来搜索最佳状态。猫的位置紧密地与聚类中心联系起来,并由两个子区更新:寻求模式和跟踪模式。寻求模式使用模拟退火策略以在概率上更新猫位置。灵感来自量子理论,跟踪模式采用量子模型更新整个解决方案空间中的猫位置。首先,提出单目标方法并采用聚类的凝聚力作为目标函数,其中施用核方法。为了考虑更具客观的函数来揭示数据的多样化方面,提出了多目标方法,并采用凝聚力和连接作为目标函数。 Pareto优化方法应用于平衡目标。在实验中,三种数据集用于检查所提出的方法的有效性,这些方法是三种合成数据集,来自UCI机器学习存储库的四个数据集,以及现场数据集。实验结果证实,所提出的方法比传统的聚类算法更好,所提出的多目标方法具有最高的精度。向从业者注意 - 本文介绍了单目标/多色眼CAT Swarm优化群集分析分析方法。通过自动提取有意义或有用的类,聚类分析可以帮助从业者或智能设备找到数据,自然数据结构,数据关系或其他特征的特定含义。所提出的方法使用CAT Swarm来搜索最佳聚类结果。可以选择一个或多个标准函数作为优化目标。多目标类型的时间复杂性高于单目标类型。因此,在工业领域,工程师应根据实际要求选择优化目标的数量。所提出的方法可广泛用于工业应用程序,以处理复杂的数据集。未来的研究可以考虑一些更加渐进的优化计划,以提高效果。

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