Multi-label learning by exploiting label dependency

Min-Ling Zhang, Kun Zhang
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引用次数: 439

Abstract

In multi-label learning, each training example is associated with a set of labels and the task is to predict the proper label set for the unseen example. Due to the tremendous (exponential) number of possible label sets, the task of learning from multi-label examples is rather challenging. Therefore, the key to successful multi-label learning is how to effectively exploit correlations between different labels to facilitate the learning process. In this paper, we propose to use a Bayesian network structure to efficiently encode the conditional dependencies of the labels as well as the feature set, with the feature set as the common parent of all labels. To make it practical, we give an approximate yet efficient procedure to find such a network structure. With the help of this network, multi-label learning is decomposed into a series of single-label classification problems, where a classifier is constructed for each label by incorporating its parental labels as additional features. Label sets of unseen examples are predicted recursively according to the label ordering given by the network. Extensive experiments on a broad range of data sets validate the effectiveness of our approach against other well-established methods.
利用标签依赖性进行多标签学习
在多标签学习中,每个训练样本都与一组标签相关联,任务是为未见过的样本预测合适的标签集。由于可能的标签集数量巨大(指数),从多标签示例中学习的任务相当具有挑战性。因此,多标签学习成功的关键是如何有效地利用不同标签之间的相关性来促进学习过程。在本文中,我们提出使用贝叶斯网络结构来有效地编码标签和特征集的条件依赖关系,并将特征集作为所有标签的共同父节点。为了使其具有实用性,我们给出了一种近似而有效的方法来寻找这种网络结构。在该网络的帮助下,多标签学习被分解为一系列单标签分类问题,其中每个标签通过将其父标签作为附加特征来构建分类器。根据网络给出的标签顺序,递归地预测未知样本的标签集。在广泛的数据集上进行的大量实验验证了我们的方法与其他成熟方法的有效性。
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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