Convex relaxation of mixture regression with efficient algorithms

Loading...
Thumbnail Image

Date

Authors

Quadrianto, Novi
Caetano, Tiberio
Lim, John
Schuurmans, Dale

Journal Title

Journal ISSN

Volume Title

Publisher

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.

Description

Citation

Source

Proceedings of The 23rd Annual Conference on Neural Information Processing Systems (NIPS 23)

Book Title

Entity type

Access Statement

License Rights

Restricted until

2037-12-31