Convergence of martingales via enriched dagger categories
Paolo Perrone, Ruben Van Belle

TL;DR
This paper uses enriched category theory to provide a new categorical proof of martingale convergence in various L^p spaces, extending classical results to a more general, functorial setting.
Contribution
It introduces a topologically enriched dagger category framework for probability spaces and martingales, enabling a categorical proof of convergence that generalizes existing results.
Findings
Proves convergence of martingales in L^p norms using enriched categories.
Introduces a categorical framework for conditional expectations and filtrations.
Demonstrates the first application of enriched categories to analysis and probability.
Abstract
We provide a categorical proof of convergence for martingales and backward martingales in mean, using enriched category theory. The enrichment we use is in topological spaces, with their canonical closed monoidal structure, which encodes a version of pointwise convergence. We work in a topologically enriched dagger category of probability spaces and Markov kernels up to almost sure equality. In this category we can describe conditional expectations exactly as dagger-split idempotent morphisms, and filtrations can be encoded as directed nets of split idempotents, with their canonical partial order structure. As we show, every increasing (or decreasing) net of idempotents tends topologically to its supremum (or infimum). Random variables on a probability space form contravariant functors into categories of Hilbert and Banach spaces, which we can enrich topologically using the L^p…
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Taxonomy
TopicsFuzzy and Soft Set Theory
