作者: Kun Qian , Xue-Yang Min , Yusheng Cheng , Fan Min
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摘要: Multi-label learning on real-world data is a challenging task due to sparse labels, missing labels, and sparse structures. Some existing approaches are effective in addressing the former two issues. In this paper, we propose a shared weight matrix with low-rank and sparse regularization for multi-label learning (2SML) algorithm to address the issues simultaneously. First, two explicit correlation matrices are constructed from the feature matrix and label matrix. Second, we select informative labels by instance representativeness to learn implicit correlations. Third, a feature manifold and label manifold are employed to guide the shared weight learning process. Extensive experiments are undertaken on multiple benchmark datasets with and without missing labels. The results show that the proposed method outperforms the state-of-the-art methods.