Online Program Home
  My Program

All Times EDT

Abstract Details

Activity Number: 530 - New Insights on High-Dimensional Statistics
Type: Invited
Date/Time: Thursday, August 6, 2020 : 1:00 PM to 2:50 PM
Sponsor: IMS
Abstract #309247
Title: Inference and Uncertainty Quantification for Noisy Matrix Completion
Author(s): Yuxin Chen*
Companies: Princeton University
Keywords: Uncertainty quantification; confidence intervals; nonconvex optimization; noisy matrix completion; convex relaxation; inference
Abstract:

Noisy matrix completion aims at estimating a low-rank matrix given partial and corrupted entries. Despite substantial progress in designing efficient estimation algorithms, it remains unclear how to assess the uncertainty of the obtained estimates and how to construct a valid yet short confidence interval for an unseen entry.

This talk takes a step towards inference and uncertainty quantification for noisy matrix completion. We develop a simple procedure to compensate for the bias of the widely used convex and nonconvex estimators. The resulting de-biased estimators admit nearly precise non-asymptotic distributional characterizations, which in turn enable optimal construction of confidence intervals / regions for, say, the missing entries and the low-rank factors. Our inferential procedures do not rely on sample splitting, thus avoiding unnecessary loss of data efficiency. As a byproduct, we obtain a sharp characterization of the estimation accuracy of our de-biased estimators, which are the first tractable algorithms that provably achieve full statistical efficiency (including both the preconstant and the rate).

This is joint work with Cong Ma, Yuling Yan and Jianqing Fan.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2020 program