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Joint multi-label classification and label correlations with missing labels and feature selection

机译:联合多标签分类和标签相关性以及缺少标签和特征选择

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摘要

Multi-label classification problem is a key learning task where each instance may belong to multiple class labels simultaneously. However, there exists four main challenges: (a) designing an effective multi-label classifier, (b) learning the high-order asymmetric label correlations automatically, (c) reducing the dimensionality of feature space, (d) dealing with both the full labels and missing labels cases. In this paper, we directly address the above four problems in a unified learning framework, and propose a novel Multi-Label classification approach joint with label correlations, Missing labels and Feature selection, named MLMF. The proposed MLMF not only makes the joint learning of independent binary classifiers, but also allows the joint learning of multi-label classification and label correlations. Meanwhile, the shared sparse feature structure among labels are selected byl2,1-norm. Furthermore, MLMF can also handle missing labels. Experimental results on sixteen multi-label data sets in terms of six evaluation criteria demonstrate that MLMF outperforms the state-of-the-art multi-label classification algorithms.
机译:多标签分类问题是一项关键的学习任务,其中每个实例可能同时属于多个类标签。但是,存在四个主要挑战:(a)设计有效的多标签分类器;(b)自动学习高阶不对称标签相关性;(c)减少特征空间的维数;(d)处理全部标签和缺少标签的情况。在本文中,我们直接在统一的学习框架中解决上述四个问题,并提出了一种新的具有标签相关性,缺失标签和特征选择的多标签分类方法,称为MLMF。所提出的MLMF不仅可以进行独立二进制分类器的联合学习,还可以对多标签分类和标签相关性进行联合学习。同时,通过l2,1-范数选择标签之间的共享稀疏特征结构。此外,MLMF还可以处理丢失的标签。根据六个评估标准对16个多标签数据集进行的实验结果表明,MLMF优于最新的多标签分类算法。

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