The Aldous--Hoover Theorem in Categorical Probability
The Aldous-Hoover Theorem concerns an infinite matrix of random variables whose distribution is invariant under finite permutations of rows and columns. It states that, up to equality in distribution, each random variable in the matrix can be expressed as a function only depending on four key variab...
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Zusammenfassung: | The Aldous-Hoover Theorem concerns an infinite matrix of random variables
whose distribution is invariant under finite permutations of rows and columns.
It states that, up to equality in distribution, each random variable in the
matrix can be expressed as a function only depending on four key variables: one
common to the entire matrix, one that encodes information about its row, one
that encodes information about its column, and a fourth one specific to the
matrix entry.
We state and prove the theorem within a category-theoretic approach to
probability, namely the theory of Markov categories. This makes the proof more
transparent and intuitive when compared to measure-theoretic ones. A key role
is played by a newly identified categorical property, the Cauchy--Schwarz
axiom, which also facilitates a new synthetic de Finetti Theorem.
We further provide a variant of our proof using the ordered Markov property
and the d-separation criterion, both generalized from Bayesian networks to
Markov categories. We expect that this approach will facilitate a systematic
development of more complex results in the future, such as categorical
approaches to hierarchical exchangeability. |
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DOI: | 10.48550/arxiv.2411.12840 |