A novel approach for multi-label classification using probabilistic classifiers

Gangadhara Rao Kommu, M. Trupthi, S. Pabboju
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引用次数: 7

Abstract

This paper presents different approaches to solve multi-label classification. In recent study there exist many approaches to solve multi-label classification problems. Which are used in various applications such as protein function classification, music categorization, semantic scene classification, etc., It in-turn uses different evaluation metrics like hamming loss and subset loss for solving multi-label classification but which are deterministic in nature. In this work, we concentrate on probabilistic models and develop two new probabilistic approaches to solve multi-label classification. One of the two approaches is based on logistic regression and nearest neighbor classifiers. This approach is similar to binary relevance method. The training phase of this approach is same as the training phase of binary relevance method, but differs in testing phase. The second approach is based on the idea of grouping related labels. This method trains one classifier for each group and the corresponding label is called as group representative. Predict other labels based on the predicted labels of group representative. The relations between the labels are found using the concept of association rule mining.
一种基于概率分类器的多标签分类新方法
本文提出了解决多标签分类问题的不同方法。在目前的研究中,存在许多解决多标签分类问题的方法。在蛋白质功能分类、音乐分类、语义场景分类等各种应用中,它又使用不同的评价指标,如汉明损失和子集损失来解决多标签分类,但本质上是确定性的。在这项工作中,我们专注于概率模型,并开发了两种新的概率方法来解决多标签分类问题。其中一种方法是基于逻辑回归和最近邻分类器。该方法类似于二元相关方法。该方法的训练阶段与二元相关方法的训练阶段相同,但在测试阶段有所不同。第二种方法基于对相关标签进行分组的思想。该方法为每个组训练一个分类器,相应的标签称为组代表。根据小组代表的预测标签预测其他标签。使用关联规则挖掘的概念找到标签之间的关系。
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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