Bounding the error of discretized Langevin algorithms for non-strongly log-concave targets

06/20/2019
by   Arnak S. Dalalyan, et al.
0

In this paper, we provide non-asymptotic upper bounds on the error of sampling from a target density using three schemes of discretized Langevin diffusions. The first scheme is the Langevin Monte Carlo (LMC) algorithm, the Euler discretization of the Langevin diffusion. The second and the third schemes are, respectively, the kinetic Langevin Monte Carlo (KLMC) for differentiable potentials and the kinetic Langevin Monte Carlo for twice-differentiable potentials (KLMC2). The main focus is on the target densities that are smooth and log-concave on ^p, but not necessarily strongly log-concave. Bounds on the computational complexity are obtained under two types of smoothness assumption: the potential has a Lipschitz-continuous gradient and the potential has a Lipschitz-continuous Hessian matrix. The error of sampling is measured by Wasserstein-q distances and the bounded-Lipschitz distance. We advocate for the use of a new dimension-adapted scaling in the definition of the computational complexity, when Wasserstein-q distances are considered. The obtained results show that the number of iterations to achieve a scaled-error smaller than a prescribed value depends only polynomially in the dimension.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/24/2018

On sampling from a log-concave density using kinetic Langevin diffusions

Langevin diffusion processes and their discretizations are often used fo...
research
01/19/2023

Kinetic Langevin MCMC Sampling Without Gradient Lipschitz Continuity – the Strongly Convex Case

In this article we consider sampling from log concave distributions in H...
research
03/22/2023

Non-asymptotic analysis of Langevin-type Monte Carlo algorithms

We study Langevin-type algorithms for sampling from Gibbs distributions ...
research
02/11/2020

Wasserstein Control of Mirror Langevin Monte Carlo

Discretized Langevin diffusions are efficient Monte Carlo methods for sa...
research
01/26/2021

The Langevin Monte Carlo algorithm in the non-smooth log-concave case

We prove non-asymptotic polynomial bounds on the convergence of the Lang...
research
08/15/2022

Nesterov smoothing for sampling without smoothness

We study the problem of sampling from a target distribution in ℝ^d whose...
research
06/14/2023

Langevin Monte Carlo for strongly log-concave distributions: Randomized midpoint revisited

We revisit the problem of sampling from a target distribution that has a...

Please sign up or login with your details

Forgot password? Click here to reset