Representable Markov categories and comparison of statistical experiments in categorical probability

Tobias Fritz, Tomáš Gonda, Paolo Perrone, Eigil Fjeldgren Rischel

Research output: Contribution to journalArticlepeer-review

15 Citations (Scopus)
24 Downloads (Pure)

Abstract

Markov categories are a recent categorical approach to the mathematical foundations of probability and statistics. Here, this approach is advanced by stating and proving equivalent conditions for second-order stochastic dominance, a widely used way of comparing probability distributions by their spread. Furthermore, we lay the foundation for the theory of comparing statistical experiments within Markov categories by stating and proving the classical Blackwell–Sherman–Stein Theorem. Our version not only offers new insight into the proof, but its abstract nature also makes the result more general, automatically specializing to the standard Blackwell–Sherman–Stein Theorem in measure-theoretic probability as well as a Bayesian version that involves prior-dependent garbling. Along the way, we define and characterize representable Markov categories, within which one can talk about Markov kernels to or from spaces of distributions. We do so by exploring the relation between Markov categories and Kleisli categories of probability monads.
Original languageEnglish
Article number113896
JournalTheoretical Computer Science
Volume961
Early online date15 May 2023
DOIs
Publication statusPublished - 15 Jun 2023

Keywords

  • Markov categories
  • mathematical statistics
  • categorical probability
  • Kleisli category
  • Blackwell–Sherman–Stein Theorem
  • second-order stochastic dominance
  • comparison of statistical experiments

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