ICML2020
Recht-Re Noncommutative Arithmetic-Geometric Mean Conjecture is False
Zehua Lai, Lek-Heng Lim
22 citations
Abstract
Stochastic optimization algorithms have become indispensable in modern machine learning. An unresolved foundational question in this area is the difference between with-replacement sampling and without-replacement sampling -- does the latter have superior convergence rate compared to the former? A groundbreaking result of Recht and Re reduces the problem to a noncommutative analogue of the arithmetic-geometric mean inequality where positive numbers are replaced by positive definite matrices. If this inequality holds for all , then without-replacement sampling indeed outperforms with-replacement sampling. The conjectured Recht-Re inequality has so far only been established for and a special case of . We will show that the Recht-Re conjecture is false for general . Our approach relies on the noncommutative Positivstellensatz, which allows us to reduce the conjectured inequality to a semidefinite program and the validity of the conjecture to certain bounds for the optimum values, which we show are false as soon as .