A Voronoi Diagram Based Classifier for Multiclass Imbalanced Data Sets

Evandro J. R. Silva, C. Zanchettin
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引用次数: 3

Abstract

The imbalance problem is receiving an increasing attention in the literature. Studies in binary cases are recurrent, however there still are several real world problems with more than two classes. The known solutions for binary datasets may not be applicable in this case. Some efforts are being applied in decomposition techniques which transforms a multiclass problem into some binary problems. However it is also possible to face a multiclass problem with an ad hoc approach, i.e., a classifier able to handle all classes at once. In this work a method able to handle several classes is proposed. This new method is based on the Voronoi diagram. We try to dynamically divide the feature space into several regions, each one assigned to a different class. It is expected for the method to be able to construct a complex classification model. However, as it is in its beginning, some tests need to be performed in order to evaluate its feasibility. Experiments with some classical classifiers confirm its feasibility, and comparisons with ad hoc methods found in literature show its potentiality.
基于Voronoi图的多类不平衡数据集分类器
不平衡问题在文献中越来越受到关注。对二元情况的研究是反复出现的,但是在现实世界中仍然存在一些超过两个类的问题。已知的二进制数据集解决方案可能不适用于这种情况。将多类问题分解为二元问题的分解技术也得到了一些研究。然而,也有可能用一种特殊的方法来面对多类问题,即,一个能够一次处理所有类的分类器。在这项工作中,提出了一种能够处理多个类的方法。这种新方法是基于Voronoi图的。我们尝试动态地将特征空间划分为几个区域,每个区域分配给不同的类。期望该方法能够构建复杂的分类模型。然而,由于它还处于起步阶段,需要进行一些测试以评估其可行性。用一些经典分类器进行的实验证实了该方法的可行性,并与文献中发现的特殊方法进行了比较,显示了该方法的潜力。
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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