Bayesian inference via sparse Hamiltonian flows

03/11/2022
by   Naitong Chen, et al.
0

A Bayesian coreset is a small, weighted subset of data that replaces the full dataset during Bayesian inference, with the goal of reducing computational cost. Although past work has shown empirically that there often exists a coreset with low inferential error, efficiently constructing such a coreset remains a challenge. Current methods tend to be slow, require a secondary inference step after coreset construction, and do not provide bounds on the data marginal evidence. In this work, we introduce a new method – sparse Hamiltonian flows – that addresses all three of these challenges. The method involves first subsampling the data uniformly, and then optimizing a Hamiltonian flow parametrized by coreset weights and including periodic momentum quasi-refreshment steps. Theoretical results show that the method enables an exponential compression of the dataset in a representative model, and that the quasi-refreshment steps reduce the KL divergence to the target. Real and synthetic experiments demonstrate that sparse Hamiltonian flows provide accurate posterior approximations with significantly reduced runtime compared with competing dynamical-system-based inference methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/12/2022

On Divergence Measures for Bayesian Pseudocoresets

A Bayesian pseudocoreset is a small synthetic dataset for which the post...
research
03/18/2022

Fast Bayesian Coresets via Subsampling and Quasi-Newton Refinement

Bayesian coresets approximate a posterior distribution by building a sma...
research
02/03/2023

Fixed-kinetic Neural Hamiltonian Flows for enhanced interpretability and reduced complexity

Normalizing Flows (NF) are Generative models which are particularly robu...
research
09/19/2022

Physics-Informed Machine Learning of Dynamical Systems for Efficient Bayesian Inference

Although the no-u-turn sampler (NUTS) is a widely adopted method for per...
research
08/12/2022

Bayesian Inference with Latent Hamiltonian Neural Networks

When sampling for Bayesian inference, one popular approach is to use Ham...
research
07/05/2019

Fast optical absorption spectra calculations for periodic solid state systems

We present a method to construct an efficient approximation to the bare ...

Please sign up or login with your details

Forgot password? Click here to reset