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Survey on clustering methods: Towards fuzzy clustering for big data

机译:聚类方法概述:面向大数据的模糊聚类

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In this report, we propose to give a review of the most used clustering methods in the literature. First, we give an introduction about clustering methods, how they work and their main challenges. Second, we present the clustering methods with some comparisons including mainly the classical partitioning clustering methods like well-known k-means algorithms, Gaussian Mixture Models and their variants, the classical hierarchical clustering methods like the agglomerative algorithm, the fuzzy clustering methods and Big data clustering methods. We present some examples of clustering algorithms comparison. Finally, we present our ideas to build a scalable and noise insensitive clustering system based on fuzzy type-2 clustering methods.
机译:在本报告中,我们建议对文献中最常用的聚类方法进行回顾。首先,我们对聚类方法,其工作方式及其主要挑战进行了介绍。其次,我们对聚类方法进行一些比较,主要包括经典的分区聚类方法(例如著名的k均值算法,高斯混合模型及其变体),经典的层次聚类方法(例如聚集算法),模糊聚类方法和大数据。聚类方法。我们提供一些聚类算法比较的例子。最后,我们提出基于模糊2类聚类方法构建可扩展且对噪声不敏感的聚类系统的想法。

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