String Diagrams with Factorized Densities

Eli Sennesh
(Northeastern University)
Jan-Willem van de Meent
(University of Amsterdam)

A growing body of research on probabilistic programs and causal models has highlighted the need to reason compositionally about model classes that extend directed graphical models. Both probabilistic programs and causal models define a joint probability density over a set of random variables, and exhibit sparse structure that can be used to reason about causation and conditional independence. This work builds on recent work on Markov categories of probabilistic mappings to define a category whose morphisms combine a joint density, factorized over each sample space, with a deterministic mapping from samples to return values. This is a step towards closing the gap between recent category-theoretic descriptions of probability measures, and the operational definitions of factorized densities that are commonly employed in probabilistic programming and causal inference.

In Sam Staton and Christina Vasilakopoulou: Proceedings of the Sixth International Conference on Applied Category Theory 2023 (ACT 2023), University of Maryland, 31 July - 4 August 2023, Electronic Proceedings in Theoretical Computer Science 397, pp. 260–278.
Published: 14th December 2023.

ArXived at: https://dx.doi.org/10.4204/EPTCS.397.16 bibtex PDF
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