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Non-Asymptotic Analysis of Fractional Langevin Monte Carlo for Non-Convex Optimization

  • Université Paris-Saclay

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Résumé

Recent studies on diffusion-based sampling methods have shown that Langevin Monte Carlo (LMC) algorithms can be beneficial for nonconvex optimization, and rigorous theoretical guarantees have been proven for both asymptotic and finite-time regimes. Algorithmically, LMC-based algorithms resemble the well-known gradient descent (GD) algorithm, where the GD recursion is perturbed by an additive Gaussian noise whose variance has a particular form. Fractional Langevin Monte Carlo (FLMC) is a recently proposed extension of LMC, where the Gaussian noise is replaced by a heavy-tailed αstable noise. As opposed to its Gaussian counterpart, these heavy-tailed perturbations can incur large jumps and it has been empirically demonstrated that the choice of α-stable noise can provide several advantages in modern machine learning problems, both in optimization and sampling contexts. However, as opposed to LMC, only asymptotic convergence properties of FLMC have been yet established. In this study, we analyze the non-asymptotic behavior of FLMC for nonconvex optimization and prove finite-time bounds for its expected suboptimality. Our results show that the weak-error of FLMC increases faster than LMC, which suggests using smaller step-sizes in FLMC. We finally extend our results to the case where the exact gradients are replaced by stochastic gradients and show that similar results hold in this setting as well.

langue originaleAnglais
Pages (de - à)4810-4819
Nombre de pages10
journalProceedings of Machine Learning Research
Volume97
étatPublié - 1 janv. 2019
Modification externeOui
Evénement36th International Conference on Machine Learning, ICML 2019 - Long Beach, États-Unis
Durée: 9 juin 201915 juin 2019

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