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Recht-Ré Noncommutative Arithmetic-Geometric Mean Conjecture is False

International Conference on Machine Learning (ICML), 2020
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 R\é reduces the problem to a noncommutative analogue of the arithmetic-geometric mean inequality where nn positive numbers are replaced by nn positive definite matrices. If this inequality holds for all nn, then without-replacement sampling indeed outperforms with-replacement sampling. The conjectured Recht-R\é inequality has so far only been established for n=2n = 2 and a special case of n=3n = 3. We will show that the Recht-R\é conjecture is false for general nn. 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 n=5n = 5.

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