Linearized Alternating Direction Method with Adaptive Penalty for Low-Rank Representation

Zhouchen Lin(Microsoft Research Asia (China)), Risheng Liu(Dalian University of Technology), Zhixun Su(Dalian University of Technology)
arXiv (Cornell University)
September 2, 2011
Cited by 757Open Access
Full Text

Abstract

Many machine learning and signal processing problems can be formulated as lin-early constrained convex programs, which could be efficiently solved by the alter-nating direction method (ADM). However, usually the subproblems in ADM are easily solvable only when the linear mappings in the constraints are identities. To address this issue, we propose a linearized ADM (LADM) method by linearizing the quadratic penalty term and adding a proximal term when solving the sub-problems. For fast convergence, we also allow the penalty to change adaptively according a novel update rule. We prove the global convergence of LADM with adaptive penalty (LADMAP). As an example, we apply LADMAP to solve low-rank representation (LRR), which is an important subspace clustering technique yet suffers from high computation cost. By combining LADMAP with a skinny SVD representation technique, we are able to reduce the complexity O(n3) of the original ADM based method to O(rn2), where r and n are the rank and size of the representation matrix, respectively, hence making LRR possible for large scale applications. Numerical experiments verify that for LRR our LADMAP based methods are much faster than state-of-the-art algorithms. 1


Related Papers

No related papers found

Powered by citation graph analysis