利用增益比距离(GRD)诱导聚类

Claudio Ratke, D. Andrade
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引用次数: 1

摘要

聚类是数据挖掘中的一种分类过程,主要用于连续值的分组。传统的聚类技术,如模糊c均值聚类(FCM),创建了对用户没有实际意义的组。相对信息增益已经成功地应用于分类应用中,例如决策树的归纳。我们的目标是修改FCM算法中计算元素间距离的方式,在计算中加入相对信息增益。根据从自己的训练数据集中选择的分类字段对元素进行分组。因此,根据元素和范畴场之间计算的增益准则来创建和诱导群体。
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Using gain ratio distance (GRD) to induce clustering
Clustering is a classification process in data mining, very used mainly for grouping of continuous values. The traditional techniques of clustering such as fuzzy C-means clustering (FCM), create groups that don't have, many times, practical sense to the user. Relative information gain has been used with success in classification applications, for instance the induction of decision tree. Our goal is to modify the way how the distance is calculated among elements in the FCM algorithm, adding to the calculation the relative information gain. The elements are grouped according to a categorical field selected from the own training dataset. Therefore groups are created and induced according to the gain criterion calculated among the elements and the categorical field.
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