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Multi-Objective Differential Evolution for Automatic Clustering with Application to Micro-Array Data Analysis

机译:自动聚类的多目标差分进化及其在微阵列数据分析中的应用

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摘要

This paper applies the Differential Evolution (DE) algorithm to the task of automatic fuzzy clustering in a Multi-objective Optimization (MO) framework. It compares the performances of two multi-objective variants of DE over the fuzzy clustering problem, where two conflicting fuzzy validity indices are simultaneously optimized. The resultant Pareto optimal set of solutions from each algorithm consists of a number of non-dominated solutions, from which the user can choose the most promising ones according to the problem specifications. A real-coded representation of the search variables, accommodating variable number of cluster centers, is used for DE. The performances of the multi-objective DE-variants have also been contrasted to that of two most well-known schemes of MO clustering, namely the Non Dominated Sorting Genetic Algorithm (NSGA II) and Multi-Objective Clustering with an unknown number of Clusters K (MOCK). Experimental results using six artificial and four real life datasets of varying range of complexities indicate that DE holds immense promise as a candidate algorithm for devising MO clustering schemes.
机译:本文将差分演化(DE)算法应用于多目标优化(MO)框架中的自动模糊聚类任务。它比较了DE的两个多目标变量在模糊聚类问题上的性能,在模糊聚类问题上同时优化了两个冲突的模糊有效性指标。每种算法生成的帕累托最优解集均由许多非支配解组成,用户可以根据问题说明从中选择最有前途的解。搜索变量的实编码表示(可容纳聚类中心的可变数量)用于DE。多目标DE变量的性能也已与两种最著名的MO聚类方案(即非支配排序遗传算法(NSGA II)和具有未知数目K的多目标聚类)的性能形成对比。 (嘲笑)。使用六个复杂程度不同的人工数据集和四个现实生活数据集的实验结果表明,DE具有广阔的前景,可作为设计MO聚类方案的候选算法。

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