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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >A dissimilarity measure based fuzzy c-means (FCM) clustering algorithm
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A dissimilarity measure based fuzzy c-means (FCM) clustering algorithm

机译:基于不相似度量的模糊c均值(FCM)聚类算法

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According to the definition of cluster objects belonging to same cluster must have high similarity while objects belonging to different clusters should be highly dissimilar. In the same way cluster validity indices for analyzing clustering result are based on the same two properties of cluster i.e. compactness (intra-cluster similarity) and separation (inter-cluster dissimilarity). Most of the clustering algorithm developed so far focuses only on minimizing the within cluster distance. Almost all clustering algorithms ignore to include the second property of a cluster i.e. to produce highly dissimilar clusters. This paper recommends and incorporates a dissimilarity measure in Fuzzy c-means (FCM) clustering algorithm, a well-known and widely used algorithm for data clustering, to analyze the benefit of considering second property of cluster. Here we also introduced a new effective way of incorporating the effect of such measures in a clustering algorithm. Experimental results on both synthetic and real datasets had shown the better performance attained by the new improved Fuzzy c-means in comparison to classical Fuzzy c-means algorithm.
机译:根据群集的定义,属于同一群集的对象必须具有高度的相似性,而属于不同群集的对象应具有高度的相似性。以相同的方式,用于分析聚类结果的聚类有效性指标基于聚类的相同两个属性,即紧密性(聚类内相似性)和分离(聚类间不相似性)。到目前为止,开发的大多数聚类算法仅集中在最小化聚类距离之内。几乎所有聚类算法都忽略了包含聚类的第二个属性,即产生高度不同的聚类。本文建议并在模糊c均值(FCM)聚类算法(一种众所周知且广泛使用的数据聚类算法)中纳入相异性度量,以分析考虑聚类第二性质的好处。在这里,我们还介绍了一种新的有效方法,将这些措施的效果纳入聚类算法。在合成数据集和真实数据集上的实验结果均表明,与传统的模糊c均值算法相比,新的改进的模糊c均值算法具有更好的性能。

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