%A Lingchi GE, Min FANG, Haikun LI, Bo CHEN %T Label correlation for partial label learning %0 Journal Article %D 2022 %J Journal of Systems Engineering and Electronics %R 10.23919/JSEE.2022.000102 %P 1043-1051 %V 33 %N 5 %U {https://www.jseepub.com/CN/abstract/article_8896.shtml} %8 2022-10-27 %X

Partial label learning aims to learn a multi-class classifier, where each training example corresponds to a set of candidate labels among which only one is correct. Most studies in the label space have only focused on the difference between candidate labels and non-candidate labels. So far, however, there has been little discussion about the label correlation in the partial label learning. This paper begins with a research on the label correlation, followed by the establishment of a unified framework that integrates the label correlation, the adaptive graph, and the semantic difference maximization criterion. This work generates fresh insight into the acquisition of the learning information from the label space. Specifically, the label correlation is calculated from the candidate label set and is utilized to obtain the similarity of each pair of instances in the label space. After that, the labeling confidence for each instance is updated by the smoothness assumption that two instances should be similar outputs in the label space if they are close in the feature space. At last, an effective optimization program is utilized to solve the unified framework. Extensive experiments on artificial and real-world data sets indicate the superiority of our proposed method to state-of-art partial label learning methods.