Linear Convergence of a Frank-Wolfe Type Algorithm over Trace-Norm Balls
Author(s): Allen-Zhu, Zeyuan; Hazan, Elad; Hu, Wei; Li, Yuanzhi
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Abstract: | We propose a rank-k variant of the classical Frank-Wolfe algorithm to solve convex optimization over a trace-norm ball. Our algorithm replaces the top singular-vector computation (1-SVD) in Frank-Wolfe with a top-k singular-vector computation (k-SVD), which can be done by repeatedly applying 1-SVD k times. Alternatively, our algorithm can be viewed as a rank-k restricted version of projected gradient descent. We show that our algorithm has a linear convergence rate when the objective function is smooth and strongly convex, and the optimal solution has rank at most k. This improves the convergence rate and the total time complexity of the Frank-Wolfe method and its variants. |
Publication Date: | 2017 |
Citation: | Allen-Zhu, Zeyuan, Elad Hazan, Wei Hu, and Yuanzhi Li. "Linear Convergence of a Frank-Wolfe Type Algorithm over Trace-Norm Balls." Advances in Neural Information Processing Systems 30 (2017). |
ISSN: | 1049-5258 |
Type of Material: | Conference Article |
Journal/Proceeding Title: | Advances in Neural Information Processing Systems |
Version: | Final published version. Article is made available in OAR by the publisher's permission or policy. |
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