An operational characterization of the notion of probability by algorithmic randomness II: Discrete probability spaces
Kohtaro Tadaki

TL;DR
This paper extends the operational characterization of probability, called ensembles, from finite to countably infinite discrete probability spaces using algorithmic randomness, providing a foundational link between measure theory and individual sequence randomness.
Contribution
It generalizes the concept of ensembles to infinite discrete probability spaces, building on prior finite case results and using advanced algorithmic randomness techniques.
Findings
Extended ensemble characterization to countably infinite spaces.
Connected independence of events with algorithmic randomness notions.
Validated the operational approach for infinite sample spaces.
Abstract
The notion of probability plays an important role in almost all areas of science and technology. In modern mathematics, however, probability theory means nothing other than measure theory, and the operational characterization of the notion of probability is not established yet. In this paper, based on the toolkit of algorithmic randomness we present an operational characterization of the notion of probability, called an ensemble, for general discrete probability spaces whose sample space is countably infinite. Algorithmic randomness, also known as algorithmic information theory, is a field of mathematics which enables us to consider the randomness of an individual infinite sequence. We use an extension of Martin-Loef randomness with respect to a generalized Bernoulli measure over the Baire space, in order to present the operational characterization. In our former work [K. Tadaki,…
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Taxonomy
TopicsComputability, Logic, AI Algorithms · Benford’s Law and Fraud Detection · semigroups and automata theory
