In this paper we present the probabilistic typed natural deduction calculus TPTND, designed to reason about and derive trustworthiness properties of probabilistic computational processes, like those underlying current AI applications. Derivability in TPTND is interpreted as the process of extracting samples of possibly complex outputs with a certain frequency from a given categorical distribution. We formalize trust for such outputs as a form of hypothesis testing on the distance between such frequency and the intended probability. The main advantage of the calculus is to render such notion of trustworthiness checkable. We present a computational semantics for the terms over which we reason and then the semantics of TPTND, where logical operators as well as a Trust operator are defined through introduction and elimination rules. We illustrate structural and metatheoretical properties, with particular focus on the ability to establish under which term evaluations and logical rules applications the notion of trustworthiness can be preserved.

Checking trustworthiness of probabilistic computations in a typed natural deduction system / F.A. D'Asaro, F.A. Genco, G. Primiero. - In: JOURNAL OF LOGIC AND COMPUTATION. - ISSN 0955-792X. - (2025), pp. 1-40. [Epub ahead of print] [10.1093/logcom/exaf003]

Checking trustworthiness of probabilistic computations in a typed natural deduction system

F.A. D'Asaro
Primo
;
F.A. Genco;G. Primiero
Ultimo
2025

Abstract

In this paper we present the probabilistic typed natural deduction calculus TPTND, designed to reason about and derive trustworthiness properties of probabilistic computational processes, like those underlying current AI applications. Derivability in TPTND is interpreted as the process of extracting samples of possibly complex outputs with a certain frequency from a given categorical distribution. We formalize trust for such outputs as a form of hypothesis testing on the distance between such frequency and the intended probability. The main advantage of the calculus is to render such notion of trustworthiness checkable. We present a computational semantics for the terms over which we reason and then the semantics of TPTND, where logical operators as well as a Trust operator are defined through introduction and elimination rules. We illustrate structural and metatheoretical properties, with particular focus on the ability to establish under which term evaluations and logical rules applications the notion of trustworthiness can be preserved.
Settore PHIL-02/A - Logica e filosofia della scienza
   BIAS, RISK, OPACITY in AI: design, verification and development of Trustworthy AI
   BRIO
   MINISTERO DELL'ISTRUZIONE E DEL MERITO
   2020SSKZ7R_001
2025
23-gen-2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1145456
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