IEEE Trans Cybern. 2018 Mar;48(3):876-889. doi: 10.1109/TCYB.2017.2663838. Epub 2017 Feb 14.
Multilabel learning deals with examples having multiple class labels simultaneously. It has been applied to a variety of applications, such as text categorization and image annotation. A large number of algorithms have been proposed for multilabel learning, most of which concentrate on multilabel classification problems and only a few of them are feature selection algorithms. Current multilabel classification models are mainly built on a single data representation composed of all the features which are shared by all the class labels. Since each class label might be decided by some specific features of its own, and the problems of classification and feature selection are often addressed independently, in this paper, we propose a novel method which can perform joint feature selection and classification for multilabel learning, named JFSC. Different from many existing methods, JFSC learns both shared features and label-specific features by considering pairwise label correlations, and builds the multilabel classifier on the learned low-dimensional data representations simultaneously. A comparative study with state-of-the-art approaches manifests a competitive performance of our proposed method both in classification and feature selection for multilabel learning.
多标签学习处理同时具有多个类别标签的示例。它已经被应用于各种应用,如文本分类和图像标注。已经提出了大量的多标签学习算法,其中大多数集中在多标签分类问题上,只有少数是特征选择算法。当前的多标签分类模型主要建立在由所有类别标签共享的所有特征组成的单一数据表示上。由于每个类别标签可能由其自身的某些特定特征决定,并且分类和特征选择问题通常是独立解决的,因此在本文中,我们提出了一种名为 JFSC 的新方法,该方法可以联合进行多标签学习的特征选择和分类。与许多现有方法不同,JFSC 通过考虑两两标签相关性来学习共享特征和标签特定特征,并同时在学习到的低维数据表示上构建多标签分类器。与最先进方法的比较研究表明,我们提出的方法在多标签学习的分类和特征选择方面都具有竞争力。