Thermodynamic Bayesian Inference
Maxwell Aifer, Samuel Duffield, Kaelan Donatella, Denis Melanson,, Phoebe Klett, Zach Belateche, Gavin Crooks, Antonio J. Martinez, Patrick J., Coles

TL;DR
This paper introduces electronic analog devices that physically implement Langevin dynamics to perform Bayesian inference efficiently, enabling fast and energy-efficient uncertainty quantification in complex models like neural networks.
Contribution
It proposes thermodynamic computing devices for Bayesian sampling, demonstrating their effectiveness for Gaussian and logistic regression models with favorable scaling properties.
Findings
Sampling time scales with log of dimension d
Energy cost scales with d log d
Validated through circuit simulations
Abstract
A fully Bayesian treatment of complicated predictive models (such as deep neural networks) would enable rigorous uncertainty quantification and the automation of higher-level tasks including model selection. However, the intractability of sampling Bayesian posteriors over many parameters inhibits the use of Bayesian methods where they are most needed. Thermodynamic computing has emerged as a paradigm for accelerating operations used in machine learning, such as matrix inversion, and is based on the mapping of Langevin equations to the dynamics of noisy physical systems. Hence, it is natural to consider the implementation of Langevin sampling algorithms on thermodynamic devices. In this work we propose electronic analog devices that sample from Bayesian posteriors by realizing Langevin dynamics physically. Circuit designs are given for sampling the posterior of a Gaussian-Gaussian model…
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Taxonomy
TopicsStatistical Mechanics and Entropy
