Convex and Nonconvex Optimization Are Both Minimax-Optimal for Noisy Blind Deconvolution Under Random Designs

B-Tier
Journal: Journal of the American Statistical Association
Year: 2023
Volume: 118
Issue: 542
Pages: 858-868

Authors (4)

Yuxin Chen (not in RePEc) Jianqing Fan (Princeton University) Bingyan Wang (not in RePEc) Yuling Yan (not in RePEc)

Score contribution per author:

0.503 = (α=2.01 / 4 authors) × 1.0x B-tier

α: calibrated so average coauthorship-adjusted count equals average raw count

Abstract

We investigate the effectiveness of convex relaxation and nonconvex optimization in solving bilinear systems of equations under two different designs (i.e., a sort of random Fourier design and Gaussian design). Despite the wide applicability, the theoretical understanding about these two paradigms remains largely inadequate in the presence of random noise. The current article makes two contributions by demonstrating that (i) a two-stage nonconvex algorithm attains minimax-optimal accuracy within a logarithmic number of iterations, and (ii) convex relaxation also achieves minimax-optimal statistical accuracy vis-à-vis random noise. Both results significantly improve upon the state-of-the-art theoretical guarantees. Supplementary materials for this article are available online.

Technical Details

RePEc Handle
repec:taf:jnlasa:v:118:y:2023:i:542:p:858-868
Journal Field
Econometrics
Author Count
4
Added to Database
2026-01-25