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Annealed Flow Transport Monte Carlo

About

Annealed Importance Sampling (AIS) and its Sequential Monte Carlo (SMC) extensions are state-of-the-art methods for estimating normalizing constants of probability distributions. We propose here a novel Monte Carlo algorithm, Annealed Flow Transport (AFT), that builds upon AIS and SMC and combines them with normalizing flows (NFs) for improved performance. This method transports a set of particles using not only importance sampling (IS), Markov chain Monte Carlo (MCMC) and resampling steps - as in SMC, but also relies on NFs which are learned sequentially to push particles towards the successive annealed targets. We provide limit theorems for the resulting Monte Carlo estimates of the normalizing constant and expectations with respect to the target distribution. Additionally, we show that a continuous-time scaling limit of the population version of AFT is given by a Feynman--Kac measure which simplifies to the law of a controlled diffusion for expressive NFs. We demonstrate experimentally the benefits and limitations of our methodology on a variety of applications.

Michael Arbel, Alexander G. D. G. Matthews, Arnaud Doucet• 2021

Related benchmarks

TaskDatasetResultRank
Unconditional modelingFunnel d = 10--
30
Sampling from synthetic distributions25GMM d = 2
Delta Log Partition Function Error (Zr)0.092
13
Sampling from synthetic distributionsManywell d = 32
Partition Function Error (Zr)13.692
13
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