PAPER DIGEST
Most Influential AISTATS 2017 Paper · 2026-03 edition
Non-square Matrix Sensing Without Spurious Local Minima Via The Burer-Monteiro Approach
Abstract
We consider the non-square matrix sensing problem, under restricted isometry property (RIP) assumptions. We focus on the non-convex formulation, where any rank-r matrix $X ∈R^m x n$ is represented as $UV^T$, where $U ∈R^m x r$ and $V ∈R^n x r$. In this paper, we complement recent findings on the non-convex geometry of the analogous PSD setting [5], and show that matrix factorization does not introduce any spurious local minima, under RIP.