Probabilistic Programming Interfaces for Random Graphs: Markov Categories, Graphons, and Nominal Sets

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We study semantic models of probabilistic programming languages over graphs, and establish a connection to graphons from graph theory and combinatorics. We show that every well-behaved equational theory for our graph probabilistic programming language corresponds to a graphon, and conversely, every graphon arises in this way. We provide three constructions for showing that every graphon arises from an equational theory. The first is an abstract construction, using Markov categories and monoidal indeterminates. The second and third are more concrete. The second is in terms of traditional measure theoretic probability, which covers 'black-and-white' graphons. The third is in terms of probability monads on the nominal sets of Gabbay and Pitts. Specifically, we use a variation of nominal sets induced by the theory of graphs, which covers ErdÅ's-Rényi graphons. In this way, we build new models of graph probabilistic programming from graphons.
Publisher
ASSOC COMPUTING MACHINERY
Issue Date
2024-01
Language
English
Article Type
Article
Citation

PROCEEDINGS OF THE ACM ON PROGRAMMING LANGUAGES-PACMPL, v.8, no.POPL, pp.1819 - 1849

ISSN
2475-1421
DOI
10.1145/3632903
URI
http://hdl.handle.net/10203/319941
Appears in Collection
CS-Journal Papers(저널논문)
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