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Multi-objective clustering: a kernel based approach using Differential Evolution

机译:多目标聚类:使用差分进化的基于内核的方法

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摘要

A multi-objective algorithm is always favoured over a single objective algorithm as it considers different aspects of a dataset in the form of various objectives. In this article, a multi-objective clustering algorithm has been proposed based on Differential Evolution. Here, three objectives have been considered to handle different complex datasets. In addition to this, a kernel function is hybridised with the objectives to evaluate the data on a hyperspace for reducing the impact of nonlinearity on cluster formation. Moreover, to get the best compromised solution from the Pareto front an effective fuzzy concept has been followed. Five metaheuristic approaches have been taken into consideration for performance comparison. These methodologies have been applied to twelve datasets and the result reveals the efficacy of the proposed model in data clustering.
机译:多目标算法总是比单目标算法更受青睐,因为它以各种目标的形式考虑了数据集的不同方面。本文提出了一种基于差分进化的多目标聚类算法。在这里,已经考虑了三个目标来处理不同的复杂数据集。除此之外,将核函数与目标进行混合以评估超空间上的数据,以减少非线性对簇形成的影响。此外,为了从Pareto前端获得最佳折衷解决方案,我们遵循了有效的模糊概念。为了进行性能比较,已经考虑了五种元启发式方法。这些方法已应用于十二个数据集,结果揭示了该模型在数据聚类中的功效。

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