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Fuzzy Clustering Methods in Data Mining: A Comparative Case Analysis

机译:数据挖掘中的模糊聚类方法:比较案例分析

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The conventional clustering algorithms in data mining like k-means algorithm have difficulties in handling the challenges posed by the collection of natural data which is often vague and uncertain. The modeling of imprecise and qualitative knowledge, as well as handling of uncertainty at various stages is possible through the use of fuzzy sets. Fuzzy logic is capable of supporting to a reasonable extent, human type reasoning in natural form by allowing partial membership for data items in fuzzy subsets. Integration of fuzzy logic in data mining has become a powerful tool in handling natural data. In this paper we introduce the concept of fuzzy clustering and also the benefits of incorporating fuzzy logic in data mining. Finally this paper provides a comparative analysis of two fuzzy clustering algorithms namely fuzzy c-means algorithm and adaptive fuzzy clustering algorithm.
机译:像k-means算法这样的数据挖掘中的常规聚类算法在处理自然数据收集带来的挑战时遇到了困难,而这些挑战通常是模糊且不确定的。通过使用模糊集,可以对不精确和定性的知识进行建模,并可以处理各个阶段的不确定性。通过允许模糊子集中的数据项具有部分隶属关系,模糊逻辑能够在一定程度上支持自然形式的人类类型推理。模糊逻辑在数据挖掘中的集成已成为处理自然数据的强大工具。在本文中,我们介绍了模糊聚类的概念,以及在数据挖掘中纳入模糊逻辑的好处。最后,本文对两种模糊聚类算法进行了比较分析,即模糊c均值算法和自适应模糊聚类算法。

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