Fast Bayesian Inference with Piecewise Deterministic Markov Processes
Title: |
Fast Bayesian Inference with Piecewise Deterministic Markov Processes |
DNr: |
NAISS 2024/22-1100 |
Project Type: |
NAISS Small Compute |
Principal Investigator: |
Ruben Seyer <rubense@chalmers.se> |
Affiliation: |
Chalmers tekniska högskola, Göteborgs universitet |
Duration: |
2024-08-22 – 2025-09-01 |
Classification: |
10106 |
Keywords: |
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Abstract
Thanks to Monte Carlo methods and modern computing power Bayesian
inference is more accessible to practitioners than ever. The ability to sample
distributions with intractable normalization constants is crucial in spatial
statistics, molecular dynamics, statistical mechanics, and more. At the same
time, our samplers are taken from a class of processes that are themselves
interesting models; the Bayesian notion of uncertainty for hypotheses still
respects the Law of Large Numbers. New sampling methods allow us to
explore alternative models for more efficient inference, with one example
being the advent of non-reversible Monte Carlo methods such as piecewise
deterministic Markov processes (PDMPs). The purpose of this project is
to develop new, accessible tools and theory for attacking difficult inference
problems with and about continuous-time Markov processes.