Convex relaxation of mixture regression with efficient algorithms
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Quadrianto, Novi
Caetano, Tiberio
Lim, John
Schuurmans, Dale
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MIT Press
Abstract
We develop a convex relaxation of maximum a posteriori estimation of a mixture of regression models. Although our relaxation involves a semidefinite matrix variable, we reformulate the problem to eliminate the need for general semidefinite programming. In particular, we provide two reformulations that admit fast algorithms. The first is a max-min spectral reformulation exploiting quasi-Newton descent. The second is a min-min reformulation consisting of fast alternating steps of closed-form updates. We evaluate the methods against Expectation-Maximization in a real problem of motion segmentation from video data.
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Proceedings of The 23rd Annual Conference on Neural Information Processing Systems (NIPS 23)
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2037-12-31