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Matrix Completion via Max-Norm Constrained Optimization

Machine Learning 2017-05-01 v3 Information Theory math.IT Machine Learning

Abstract

Matrix completion has been well studied under the uniform sampling model and the trace-norm regularized methods perform well both theoretically and numerically in such a setting. However, the uniform sampling model is unrealistic for a range of applications and the standard trace-norm relaxation can behave very poorly when the underlying sampling scheme is non-uniform. In this paper we propose and analyze a max-norm constrained empirical risk minimization method for noisy matrix completion under a general sampling model. The optimal rate of convergence is established under the Frobenius norm loss in the context of approximately low-rank matrix reconstruction. It is shown that the max-norm constrained method is minimax rate-optimal and yields a unified and robust approximate recovery guarantee, with respect to the sampling distributions. The computational effectiveness of this method is also discussed, based on first-order algorithms for solving convex optimizations involving max-norm regularization.

Keywords

Cite

@article{arxiv.1303.0341,
  title  = {Matrix Completion via Max-Norm Constrained Optimization},
  author = {T. Tony Cai and Wen-Xin Zhou},
  journal= {arXiv preprint arXiv:1303.0341},
  year   = {2017}
}

Comments

33 pages

R2 v1 2026-06-21T23:35:22.307Z