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Solving Schrödinger Bridges via Maximum Likelihood

Published version
Peer-reviewed

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Abstract

The Schrödinger bridge problem (SBP) finds the most likely stochastic evolution between two probability distributions given a prior stochastic evolution. As well as applications in the natural sciences, problems of this kind have important applications in machine learning such as dataset alignment and hypothesis testing. Whilst the theory behind this problem is relatively mature, scalable numerical recipes to estimate the Schrödinger bridge remain an active area of research. Our main contribution is the proof of equivalence between solving the SBP and an autoregressive maximum likelihood estimation objective. This formulation circumvents many of the challenges of density estimation and enables direct application of successful machine learning techniques. We propose a numerical procedure to estimate SBPs using Gaussian process and demonstrate the practical usage of our approach in numerical simulations and experiments.

Description

Keywords

Schrödinger bridges, machine learning, stochastic control

Journal Title

Entropy

Conference Name

Journal ISSN

1099-4300

Volume Title

23

Publisher

MDPI
Sponsorship
huawei technology co (NA)
Engineering and Physical Sciences Research Council (EP/T517847/1)