Stochastic optimization in learning and inference often relies on Markov chain Monte Carlo (MCMC) to approximate gradients when exact computation is intractable. However, finite-time MCMC estimators are biased, and reducing this bias typically comes at a higher computational cost. We propose a multilevel Monte Carlo gradient estimator whose bias decays as O (T₍^-1) while its expected computational cost grows only as O (log Tₙ), where Tₙ is the maximal truncation level at iteration n. Building on this approach, we introduce a multilevel MCMC framework for adaptive stochastic gradient methods, leading to new multilevel variants of Adagrad and AMSGrad algorithms. Under conditions controlling the estimator bias and its second and third moments, we establish a convergence rate of order O (n^-1/2) up to logarithmic factors. Finally, we illustrate these results on Importance-Weighted Autoencoders trained with the proposed multilevel adaptive methods.
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Godichon‐Baggioni et al. (Fri,) studied this question.
synapsesocial.com/papers/69a76642badf0bb9e87dc55f — DOI: https://doi.org/10.48550/arxiv.2601.22799
Antoine Godichon‐Baggioni
Sorbonne Université
Gabriel Lang
Washington University in St. Louis
Sylvain Le Corff
Centre de Recherche en Mathématiques de la Décision
Centre de Recherche en Mathématiques de la Décision
Mathématiques et Informatique Appliquées
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