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Iterative Collaborative Filtering for Sparse Matrix Estimation

Statistics Theory 2025-07-29 v4 Statistics Theory

Abstract

We consider sparse matrix estimation where the goal is to estimate an n×nn\times n matrix from noisy observations of a small subset of its entries. We analyze the estimation error of the popularly utilized collaborative filtering algorithm for the sparse regime. Specifically, we propose a novel iterative variant of the algorithm, adapted to handle the setting of sparse observations. We establish that as long as the fraction of entries observed at random scale as log1+κ(n)n\frac{\log^{1+\kappa}(n)}{n} for any fixed κ>0\kappa > 0, the estimation error with respect to the max\max-norm decays to 00 as nn\to\infty assuming the underlying matrix of interest has constant rank rr. Our result is robust to model mis-specification in that if the underlying matrix is approximately rank rr, then the estimation error decays to the approximate error with respect to the max\max-norm. In the process, we establish algorithm's ability to handle arbitrary bounded noise in the observations.

Keywords

Cite

@article{arxiv.1712.00710,
  title  = {Iterative Collaborative Filtering for Sparse Matrix Estimation},
  author = {Christian Borgs and Jennifer Chayes and Devavrat Shah and Christina Lee Yu},
  journal= {arXiv preprint arXiv:1712.00710},
  year   = {2025}
}