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Fuzzy Clustering to Identify Clusters at Different Levels of Fuzziness: An Evolutionary Multiobjective Optimization Approach

机译:模糊聚类以识别不同水平模糊的集群:进化多目标优化方法

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摘要

Fuzzy clustering methods identify naturally occurring clusters in a dataset, where the extent to which different clusters are overlapped can differ. Most methods have a parameter to fix the level of fuzziness. However, the appropriate level of fuzziness depends on the application at hand. This paper presents an entropy c-means (ECM), a method of fuzzy clustering that simultaneously optimizes two contradictory objective functions, resulting in the creation of fuzzy clusters with different levels of fuzziness. This allows ECM to identify clusters with different degrees of overlap. ECM optimizes the two objective functions using two multiobjective optimization methods, nondominated sorting genetic algorithm II (NSGA-II) and multiobjective evolutionary algorithm based on decomposition (MOEA/D). We also propose a method to select a suitable tradeoff clustering from the Pareto front. Experiments on challenging synthetic datasets as well as real-world datasets show that ECM leads to better cluster detection compared to the conventional fuzzy clustering methods as well as previously used multiobjective methods for fuzzy clustering.
机译:模糊聚类方法识别数据集中的天然存在的簇,其中不同簇重叠的程度可以不同。大多数方法都有一个参数来修复模糊级别。然而,适当的模糊水平取决于手头的应用。本文提出了一种熵C-Means(ECM),一种模糊聚类方法,同时优化两个矛盾的物理功能,导致模糊簇具有不同的模糊性。这允许ECM识别具有不同重叠程度的群集。 ECM使用两个多目标优化方法优化两个目标函数,基于分解(MOEA / D)的NondoMination分类遗传算法II(NSGA-II)和多目标进化算法。我们还提出了一种选择从帕累托前面选择合适的权衡聚类。关于挑战合成数据集的实验以及真实世界数据集显示ECM与传统的模糊聚类方法相比,ECM导致更好的群集检测以及以前使用的模糊聚类的多目标方法。

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