Semi-symbolic inference for efficient streaming probabilistic programming

Author:

Atkinson Eric1ORCID,Yuan Charles1ORCID,Baudart Guillaume2ORCID,Mandel Louis3ORCID,Carbin Michael1ORCID

Affiliation:

1. Massachusetts Institute of Technology, USA

2. ENS — PSL University — CNRS — Inria, France

3. IBM Research, USA

Abstract

A streaming probabilistic program receives a stream of observations and produces a stream of distributions that are conditioned on these observations. Efficient inference is often possible in a streaming context using Rao-Blackwellized particle filters (RBPFs), which exactly solve inference problems when possible and fall back on sampling approximations when necessary. While RBPFs can be implemented by hand to provide efficient inference, the goal of streaming probabilistic programming is to automatically generate such efficient inference implementations given input probabilistic programs. In this work, we propose semi-symbolic inference, a technique for executing probabilistic programs using a runtime inference system that automatically implements Rao-Blackwellized particle filtering. To perform exact and approximate inference together, the semi-symbolic inference system manipulates symbolic distributions to perform exact inference when possible and falls back on approximate sampling when necessary. This approach enables the system to implement the same RBPF a developer would write by hand. To ensure this, we identify closed families of distributions – such as linear-Gaussian and finite discrete models – on which the inference system guarantees exact inference. We have implemented the runtime inference system in the ProbZelus streaming probabilistic programming language. Despite an average 1.6× slowdown compared to the state of the art on existing benchmarks, our evaluation shows that speedups of 3×-87× are obtainable on a new set of challenging benchmarks we have designed to exploit closed families.

Funder

Office of Naval Research

Publisher

Association for Computing Machinery (ACM)

Subject

Safety, Risk, Reliability and Quality,Software

Reference31 articles.

1. Eric Atkinson Charles Yuan Guillaume Baudart Louis Mandel and Michael Carbin. 2022. Semi-Symbolic Inference for Efficient Streaming Probabilistic Programming. arxiv:2209.07490 Eric Atkinson Charles Yuan Guillaume Baudart Louis Mandel and Michael Carbin. 2022. Semi-Symbolic Inference for Efficient Streaming Probabilistic Programming. arxiv:2209.07490

2. Reactive probabilistic programming

3. Evaluating Multiple Object Tracking Performance: The CLEAR MOT Metrics

4. Pyro: Deep Universal Probabilistic Programming;Bingham Eli;J. Mach. Learn. Res.,2019

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