Practical Large-Scale Optimization for Max-norm Regularization
Lee, Jason D., Recht, Ben, Srebro, Nathan, Tropp, Joel, Salakhutdinov, Ruslan R.
–Neural Information Processing Systems
The max-norm was proposed as a convex matrix regularizer by Srebro et al (2004) and was shown to be empirically superior to the trace-norm for collaborative filtering problems. Although the max-norm can be computed in polynomial time, there are currently no practical algorithms for solving large-scale optimization problems that incorporate the max-norm. The present work uses a factorization technique of Burer and Monteiro (2003) to devise scalable first-order algorithms for convex programs involving the max-norm. These algorithms are applied to solve huge collaborative filtering, graph cut, and clustering problems. Empirically, the new methods outperform mature techniques from all three areas.
Neural Information Processing Systems
Dec-31-2010