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Multi-Task Feature Learning Via Efficient l2,1-Norm Minimization

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The problem of joint feature selection across a group of related tasks has applications in many areas including biomedical informatics and computer vision. We consider the l2,1-norm regularized regression model for joint feature selection from multiple tasks, which can be derived in the probabilistic framework by assuming a suitable prior from the exponential family. One appealing feature of the l2,1-norm regularization is that it encourages multiple predictors to share similar sparsity patterns. However, the resulting optimization problem is challenging to solve due to the non-smoothness of the l2,1-norm regularization. In this paper, we propose to accelerate the computation by reformulating it as two equivalent smooth convex optimization problems which are then solved via the Nesterov's method-an optimal first-order black-box method for smooth convex optimization. A key building block in solving the reformulations is the Euclidean projection. We show that the Euclidean projection for the first reformulation can be analytically computed, while the Euclidean projection for the second one can be computed in linear time. Empirical evaluations on several data sets verify the efficiency of the proposed algorithms.

Jun Liu, Shuiwang Ji, Jieping Ye• 2012

Related benchmarks

TaskDatasetResultRank
Multi-Label ClassificationCorel5k
Ranking Loss0.994
43
Multi-label Feature SelectionLanglog
Macro-F199.21
11
Multi-Label ClassificationYelp
Ranking Loss0.6377
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Multi-label Feature SelectionImage
AP80.87
11
Multi-label Feature SelectionAmphibians
OE36.66
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Multi-label Feature SelectionReuters
CV2.532
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Multi-label Feature SelectionCorel5k
Macro-F11.6
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Multi-label Feature SelectionYeast
AP72.12
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Multi-label Feature SelectionCorel5k
AP1
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Multi-label Feature SelectionYelp
AP26.07
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