Probabilistic Multi-Label Classification with Sparse Feature Learning.

IJCAI '13: Proceedings of the Twenty-Third international joint conference on Artificial Intelligence(2013)

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摘要
Multi-label classification is a critical problem in many areas of data analysis such as image labeling and text categorization. In this paper we propose a probabilistic multi-label classification model based on novel sparse feature learning. By employing an individual sparsity inducing l 1 -norm and a group sparsity inducing l 2,1 -norm, the proposed model has the capacity of capturing both label interdependencies and common predictive model structures. We formulate this sparse norm regularized learning problem as a non-smooth convex optimization problem, and develop a fast proximal gradient algorithm to solve it for an optimal solution. Our empirical study demonstrates the efficacy of the proposed method on a set of multi-label tasks given a limited number of labeled training instances.
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关键词
common predictive model structure,critical problem,non-smooth convex optimization problem,probabilistic multi-label classification model,proposed model,Multi-label classification,group sparsity,individual sparsity,multi-label task,novel sparse feature learning
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