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Non-asymptotic convergence analysis for the Unadjusted Langevin Algorithm (1507.05021v3)
Published 17 Jul 2015 in math.ST, stat.CO, stat.ME, and stat.TH
Abstract: In this paper, we study a method to sample from a target distribution $\pi$ over $\mathbb{R}d$ having a positive density with respect to the Lebesgue measure, known up to a normalisation factor. This method is based on the Euler discretization of the overdamped Langevin stochastic differential equation associated with $\pi$. For both constant and decreasing step sizes in the Euler discretization, we obtain non-asymptotic bounds for the convergence to the target distribution $\pi$ in total variation distance. A particular attention is paid to the dependency on the dimension $d$, to demonstrate the applicability of this method in the high dimensional setting. These bounds improve and extend the results of (Dalalyan 2014).