Mirrored Langevin Dynamics
Hsieh, Ya-Ping, Kavis, Ali, Rolland, Paul, Cevher, Volkan
–Neural Information Processing Systems
We consider the problem of sampling from constrained distributions, which has posed significant challenges to both non-asymptotic analysis and algorithmic design. We propose a unified framework, which is inspired by the classical mirror descent, to derive novel first-order sampling schemes. We prove that, for a general target distribution with strongly convex potential, our framework implies the existence of a first-order algorithm achieving O~(\epsilon^{-2}d) convergence, suggesting that the state-of-the-art O~(\epsilon^{-6}d^5) can be vastly improved. With the important Latent Dirichlet Allocation (LDA) application in mind, we specialize our algorithm to sample from Dirichlet posteriors, and derive the first non-asymptotic O~(\epsilon^{-2}d^2) rate for first-order sampling. We further extend our framework to the mini-batch setting and prove convergence rates when only stochastic gradients are available. Finally, we report promising experimental results for LDA on real datasets.
Neural Information Processing Systems
Dec-31-2018
- Country:
- Asia > Middle East
- Jordan (0.04)
- Europe > Switzerland
- North America
- Canada > Quebec
- Montreal (0.04)
- United States > New York (0.04)
- Canada > Quebec
- Asia > Middle East
- Technology: