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Comparison of Clustering Methods in Cotton Textile Industry

机译:棉纺织工业聚类方法比较

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Clustering is the task of partitioning data objects into groups, so that the objects within a cluster are similar to one another and dissimilar to the objects in other clusters. The efficiency random algorithm for good k is used to estimate the optimal number of clusters. In this research two important clustering algorithms, namely centroid based k-means, and representative object based fuzzy c-means clustering algorithms are compared in the original real-world U.S. cotton textile and apparel imports data set. This data set is not analyzed very often, it is dictated by business, economics and politics environments and its behaviour is not well known. The analysis of several different real-world economies and industrial data sets of one country is possible to predict it's economic development.
机译:群集是将数据对象分成组的任务,以便群集中的对象与其他群集中的对象相似。良好k的效率随机算法用于估计最佳簇数。在这项研究中,在原始现实世界美国棉纺织品和服装进口数据集中比较了两个重要的聚类算法,即基于质心基于基于的基于K均值和基于代表对象的模糊C-Meary集群聚类算法。该数据集不会经常分析,它由业务,经济和政治环境决定,其行为并不众所周知。对几个不同的现实世界经济和工业数据集的分析可以预测它是经济的发展。

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