Constrained Langevin Algorithms with L-Mixing External Random Variables
Abstract
Langevin algorithms are gradient descent methods augmented with additive noise, and are widely used in Markov Chain Monte Carlo (MCMC) sampling, optimization, and machine learning. In recent years, the non-asymptotic analysis of Langevin algorithms for non-convex learning has been extensively explored. For constrained problems with non-convex losses over a compact convex domain with IID data variables, the projected Langevin algorithm achieves a deviation of $O(T^{-1/4} (\log T)^{1/2})$ from its target distribution \cite{lamperski2021projected} in $1$-Wasserstein distance. In this paper, we obtain a deviation of $O(T^{-1/2} \log T)$ in $1$-Wasserstein distance for non-convex losses with $L$-mixing data variables and polyhedral constraints (which are not necessarily bounded). This improves on the previous bound for constrained problems and matches the best-known bound for unconstrained problems.
Cite
Text
Zheng and Lamperski. "Constrained Langevin Algorithms with L-Mixing External Random Variables." Neural Information Processing Systems, 2022.Markdown
[Zheng and Lamperski. "Constrained Langevin Algorithms with L-Mixing External Random Variables." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/zheng2022neurips-constrained/)BibTeX
@inproceedings{zheng2022neurips-constrained,
title = {{Constrained Langevin Algorithms with L-Mixing External Random Variables}},
author = {Zheng, Yuping and Lamperski, Andrew},
booktitle = {Neural Information Processing Systems},
year = {2022},
url = {https://mlanthology.org/neurips/2022/zheng2022neurips-constrained/}
}