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Extension to c-means algorithm for the use of similarity functions

机译:扩展c-means算法以使用相似性函数

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The C-Means algorithm has been motive of many extensions since the first publications.The extensions until now consider mainly the following aspects:the selection of initial seeds(centers); the determination of the optimal number of clusters and the use of different functionals for generate the clusters.In this paper it is proposed an extension to the C-means algorithm which considers description of the objects (data) with quantitative and qualitative features,besides consider missing data.These types of descriptions are very frequent in soft sciences as Medicine,Geology,Sociology,Marketing,etc.so algorithm use similarity functions that may be in function of partial similarity functions consequently allows comparing objects analyzing subdescriptions of the same.Results using standard public databases [2] are showed.In addition,a comparison wiht classical C-Means algorithm [7] is provided.
机译:自首次发表以来,C-Means算法一直是许多扩展的动机。到目前为止,扩展主要考虑以下方面:初始种子(中心)的选择;本文提出了对C-均值算法的扩展,该算法考虑了具有定量和定性特征的对象(数据)的描述,同时考虑了在医学,地质学,社会学,市场营销等软科学中,这类描述非常常见,因此算法使用的相似性函数可能具有部分相似性函数的功能,因此允许比较分析相同子描述的对象。给出了标准的公共数据库[2]。此外,还提供了与经典C均值算法[7]的比较。

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