Published August 28, 2025 | Version v1
Software Open

Static Factorisation of Probabilistic Programs With User-Labelled Sample Statements and While Loops

  • 1. ROR icon TU Wien

Contributors

Supervisor:

  • 1. ROR icon TU Wien

Description

It is commonly known that any Bayesian network can be implemented as a probabilistic program, but the reverse direction is not so clear. In this work, we address the open question to what extent a probabilistic program with user-labelled sample statements and while loops – features found in languages like Gen, Turing, and Pyro – can be represented graphically. To this end, we extend existing operational semantics to support these language features. By translating a program to its control-flow graph, we define a sound static analysis that approximates the dependency structure of the random variables in the program. As a result, we obtain a static factorisation of the implicitly defined program density, which is equivalent to the known Bayesian network factorisation for programs without loops and constant labels, but constitutes a novel graphical representation for programs that define an unbounded number of random variables via loops or dynamic labels. We further develop a sound program slicing technique to leverage this structure to statically enable three well-known optimisations for the considered program class: we reduce the variance of gradient estimates in variational inference and we speed up both single-site Metropolis Hastings and sequential Monte Carlo. These optimisations are proven correct and empirically shown to match or outperform existing techniques.

Technical info

You may install the docker images with `docker load -i pplstaticfactor-amd64.tar` and `docker load -i pplstaticfactor-arm64.tar` depending on your system.

Files

PPLStaticFactor-main.zip

Files (3.9 GB)

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md5:29604340af2d5a35e5676e94e6d0ee26
3.4 GB Download
md5:e93d0572e34c255363e839b0680d22ab
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md5:eb01f09d44f203279164b609b0a15996
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Additional details

Software

Repository URL
https://github.com/ipa-lab/PPLStaticFactor
Programming language
Python, Julia, JavaScript
Development Status
Concept