Microclustering-Based Multi-Class Classification on Imbalanced Multi-Relational Datasets

Hemlata Pant, Reena Srivastava
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引用次数: 0

Abstract

In a relational database, classification algorithms are used to look for patterns across several interconnected relations. Most of the methods for multi-relational classification algorithms implicitly assume that the classes in the target relation are equally represented. Thus, they tend to produce poor predictive performance over the imbalanced dataset. In this paper, the authors propose an algorithm-level method MCMRC_IB for the classification of imbalanced multi-relational dataset. The proposed method extends MCMRC which is for balanced datasets. MCMRC_IB exploits the property of the imbalanced datasets that the minority class is represented by a smaller number of records usually 20-30% of the total records and is to be dealt accordingly by giving them weightages. The proposed method is able to handle multiple classes. Experimental results conðrm the efficiency of the proposed method in terms of predictive accuracy, F-measure, and G-mean.
基于微聚类的不平衡多关系数据集多类分类
在关系数据库中,分类算法用于在多个相互关联的关系中查找模式。大多数用于多关系分类算法的方法隐含地假设目标关系中的类是相等表示的。因此,它们往往在不平衡的数据集上产生较差的预测性能。本文提出了一种算法级的非平衡多关系数据集分类方法MCMRC_IB。该方法扩展了平衡数据集的MCMRC。MCMRC_IB利用了不平衡数据集的属性,即少数类由较少数量的记录(通常占总记录的20-30%)表示,并通过赋予它们权重来相应地处理它们。所提出的方法能够处理多个类。实验结果从预测精度、F-measure和G-mean三个方面验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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