基于Wiener变换的二值数据聚类

D. A. Kumar, M. C. Loraine Charlet Annie
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引用次数: 2

摘要

聚类是对相似的项目进行分组的过程。当数据维数和稀疏度增加时,聚类变得非常乏味。二进制数据是信息系统中用于超大型数据库的最简单的数据形式,它在计算效率、内存容量等方面非常有效地表示分类类型的数据。通常用0和1作为数值进行二值数据聚类。本文采用维纳变换将二值数据预处理为实数,实现二值数据聚类。Wiener是一种基于统计的线性变换,它在均方误差方面是最优的。计算结果表明,基于维纳变换的聚类在客观性和主观性方面都是非常有效的。
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Binary data clustering based on Wiener transformation
Clustering is the process of grouping similar items. Clustering becomes very tedious when data dimensionality and sparsity increases. Binary data are the simplest form of data used in information systems for very large database and it is very efficient based on computational efficiency, memory capacity to represent categorical type data. Usually the binary data clustering is done by using 0 and 1 as numerical value. In this paper, the binary data clustering is performed by preprocessing the binary data to real by wiener transformation. Wiener is a linear Transformation based upon statistics and it is optimal in terms of Mean square error. Computational results show that the clustering based on Wiener transformation is very efficient in terms of objectivity and subjectivity.
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