Multilevel Langevin Pathwise Average for Gibbs Approximation
Abstract
We propose and study a new multilevel method for the numerical approximation of a Gibbs distribution π on , based on (overdamped) Langevin diffusions. This method relies on a multilevel occupation measure, that is, on an appropriate combination of R occupation measures of (constant-step) Euler schemes with respective steps . We first state a quantitative result under general assumptions that guarantees an ε-approximation (in an L2-sense) with a cost of the order or under less contractive assumptions. We then apply it to overdamped Langevin diffusions with strongly convex potential and obtain an ε-complexity of the order or under additional assumptions on U. More precisely, up to universal constants, an appropriate choice of the parameters leads to a cost controlled by (where and respectively denote the supremum and the infimum of the largest and lowest eigenvalue of ). We finally complete these theoretical results with some numerical illustrations, including comparisons to other algorithms in Bayesian learning and opening to the non–strongly convex setting.
Funding: The authors are grateful to the SIRIC ILIAD Nantes-Angers program, supported by the French National Cancer Institute [INCA-DGOS-Inserm Grant 12558].

