Loading…
NIPS 2013 has ended
Thursday, December 5 • 7:00pm - 11:59pm
On the Linear Convergence of the Proximal Gradient Method for Trace Norm Regularization

Sign up or log in to save this to your schedule, view media, leave feedback and see who's attending!

Motivated by various applications in machine learning, the problem of minimizing a convex smooth loss function with trace norm regularization has received much attention lately. Currently, a popular method for solving such problem is the proximal gradient method (PGM), which is known to have a sublinear rate of convergence. In this paper, we show that for a large class of loss functions, the convergence rate of the PGM is in fact linear. Our result is established without any strong convexity assumption on the loss function. A key ingredient in our proof is a new Lipschitzian error bound for the aforementioned trace norm-regularized problem, which may be of independent interest.
None


Thursday December 5, 2013 7:00pm - 11:59pm PST
Harrah's Special Events Center, 2nd Floor
  Posters
  • posterid Thu08
  • location Poster# Thu08