On quantitative convergence for stochastic processes: Crossings, fluctuations and martingales

Morenikeji Neri, Thomas Powell

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Abstract

We develop a general framework for extracting highly uniform bounds on local stability for stochastic processes in terms of information on fluctuations or crossings. This includes a large class of martingales: As a corollary of our main abstract result, we obtain a quantitative version of Doob's convergence theorem for $L_1$-sub- and supermartingales, but more importantly, demonstrate that our framework readily extends to more complex stochastic processes such as almost-supermartingales, thus paving the way for future applications in stochastic optimization. Fundamental to our approach is the use of ideas from logic, particularly a careful analysis of the quantifier structure of probabilistic statements and the introduction of a number of abstract notions that represent stochastic convergence in a quantitative manner. In this sense, our work falls under the `proof mining' program, and indeed, our quantitative results provide new examples of the phenomenon, recently made precise by the first author and Pischke, that many proofs in probability theory are proof-theoretically tame, and amenable to the extraction of quantitative data that is both of low complexity and independent of the underlying probability space.
Original languageEnglish
Pages (from-to)974-1019
Number of pages46
JournalTransactions of the American Mathematical Society
Volume12
Early online date24 Jul 2025
DOIs
Publication statusPublished - 31 Dec 2025

Acknowledgements

The authors are indebted to Nicholas Pischke for numerous insightful discussions on the topics of this paper, along with many valuable comments on an earlier draft of the paper which improved its presentation considerably. The authors also thank Jeremy Avigad for providing several extremely useful pointers to the literature.

Funding

The first author was partially supported by the EPSRC Centre for Doctoral Training in Digital Entertainment EP/L016540/1, and the second author was partially supported by the EPSRC grant EP/W035847/1.

FundersFunder number
Centre for Digital EntertainmentEP/L016540/1
Engineering and Physical Sciences Research CouncilEP/W035847/1

ASJC Scopus subject areas

  • Mathematics (miscellaneous)

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