Published 2018 | Version v2
Journal article

Analysis of Langevin Monte Carlo via Convex Optimization

Description

Description

In this paper, we provide new insights on the Unadjusted Langevin Algorithm. We show that this method can be formulated as a first order optimization algorithm of an objective functional defined on the Wasserstein space of order $2$. Using this interpretation and techniques borrowed from convex optimization, we give a non-asymptotic analysis of this method to sample from logconcave smooth target distribution on $\mathbb{R}^d$. Our proofs are then easily extended to the Stochastic Gradient Langevin Dynamics, which is a popular extension of the Unadjusted Langevin Algorithm. Finally, this interpretation leads to a new methodology to sample from a non-smooth target distribution, for which a similar study is done.

Details

Title Analysis of Langevin Monte Carlo via Convex Optimization
Authors
  • Durmus, A.
  • Majewski, S.
  • Miasojedow, B.
  • Publisher Journal of Machine Learning Research
    Year of publication 2018