NeurIPS2022

The Burer-Monteiro SDP method can fail even above the Barvinok-Pataki bound

Liam O'Carroll, Vaidehi Srinivas, Aravindan Vijayaraghavan

被引用 15 次

摘要

The most widely used technique for solving large-scale semidefinite programs (SDPs) in practice is the non-convex Burer-Monteiro method, which explicitly maintains a low-rank SDP solution for memory efficiency. There has been much recent interest in obtaining a better theoretical understanding of the Burer-Monteiro method. When the maximum allowed rank pp of the SDP solution is above the Barvinok-Pataki bound (where a globally optimal solution of rank at most pp is guaranteed to exist), a recent line of work established convergence to a global optimum for generic or smoothed instances of the problem. However, it was open whether there even exists an instance in this regime where the Burer-Monteiro method fails. We prove that the Burer-Monteiro method can fail for the Max-Cut SDP on nn vertices when the rank is above the Barvinok-Pataki bound (p2np \ge \sqrt{2n}). We provide a family of instances that have spurious local minima even when the rank p=n/2p = n/2. Combined with existing guarantees, this settles the question of the existence of spurious local minima for the Max-Cut formulation in all ranges of the rank and justifies the use of beyond worst-case paradigms like smoothed analysis to obtain guarantees for the Burer-Monteiro method.