Conditional Independence by Typing

Author:

Gorinova Maria I.1,Gordon Andrew D.2,Sutton Charles1,Vákár Matthijs3

Affiliation:

1. University of Edinburgh, Edinburgh, United Kingdom

2. Microsoft Research and University of Edinburgh, Cambridge, United Kingdom

3. Utrecht University, Utrecht, Netherlands

Abstract

A central goal of probabilistic programming languages (PPLs) is to separate modelling from inference. However, this goal is hard to achieve in practice. Users are often forced to re-write their models to improve efficiency of inference or meet restrictions imposed by the PPL. Conditional independence (CI) relationships among parameters are a crucial aspect of probabilistic models that capture a qualitative summary of the specified model and can facilitate more efficient inference. We present an information flow type system for probabilistic programming that captures conditional independence (CI) relationships and show that, for a well-typed program in our system, the distribution it implements is guaranteed to have certain CI-relationships. Further, by using type inference, we can statically deduce which CI-properties are present in a specified model. As a practical application, we consider the problem of how to perform inference on models with mixed discrete and continuous parameters. Inference on such models is challenging in many existing PPLs, but can be improved through a workaround, where the discrete parameters are used implicitly , at the expense of manual model re-writing. We present a source-to-source semantics-preserving transformation, which uses our CI-type system to automate this workaround by eliminating the discrete parameters from a probabilistic program. The resulting program can be seen as a hybrid inference algorithm on the original program, where continuous parameters can be drawn using efficient gradient-based inference methods, while the discrete parameters are inferred using variable elimination. We implement our CI-type system and its example application in SlicStan: a compositional variant of Stan. 1

Funder

EPSRC Centre for Doctoral Training in Data Science

UK Engineering and Physical Sciences Research Council

University of Edinburgh

European Union’s Horizon 2020 research and innovation programme

Publisher

Association for Computing Machinery (ACM)

Subject

Software

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1. Compiling Probabilistic Programs for Variable Elimination with Information Flow;Proceedings of the ACM on Programming Languages;2024-06-20

2. Bit Blasting Probabilistic Programs;Proceedings of the ACM on Programming Languages;2024-06-20

3. Higher Order Bayesian Networks, Exactly;Proceedings of the ACM on Programming Languages;2024-01-05

4. Type-Preserving, Dependence-Aware Guide Generation for Sound, Effective Amortized Probabilistic Inference;Proceedings of the ACM on Programming Languages;2023-01-09

5. Smoothness Analysis for Probabilistic Programs with Application to Optimised Variational Inference;Proceedings of the ACM on Programming Languages;2023-01-09

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