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Decision functions for chain classifiers based on Bayesian networks for multi-label classification

机译:基于贝叶斯网络的多标签分类链分类器决策函数

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摘要

Multi-label classification problems require each instance to be assigned a subset of a defined set of labels. This problem is equivalent to finding a multi-valued decision function that predicts a vector of binary classes. In this paper we study the decision boundaries of two widely used approaches for building multi-label classifiers, when Bayesian network-augmented naive Bayes classifiers are used as base models: Binary relevance method and chain classifiers. In particular extending previous single-label results to multi-label chain classifiers, we find polynomial expressions for the multi-valued decision functions associated with these methods. We prove upper boundings on the expressive power of both methods and we prove that chain classifiers provide a more expressive model than the binary relevance method. (C) 2015 Elsevier Inc. All rights reserved.
机译:多标签分类问题要求为每个实例分配一组已定义标签的子集。这个问题等同于找到一个预测二元类向量的多值决策函数。在本文中,当以贝叶斯网络为基础的朴素贝叶斯分类器作为基本模型时,我们研究了两种广泛使用的用于构建多标签分类器的决策边界:二元相关方法和链式分类器。特别是将先前的单标签结果扩展到多标签链分类器,我们发现了与这些方法相关的多值决策函数的多项式表达式。我们证明了这两种方法的表达能力的上界,并且我们证明了链分类器比二进制相关性方法提供了更具表达力的模型。 (C)2015 Elsevier Inc.保留所有权利。

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