The widespread emergence of phenomena of bias is certainly among the most adverse impacts of new data-intensive sciences and technologies. The causes of such undesirable behaviours must be traced back to data themselves, as well as to certain design choices of machine learning algorithms. The task of modelling bias from a logical point of view requires to extend the vast family of defeasible logics and logics for uncertain reasoning with ones that capture some few, fundamental properties of biased predictions. However, a logically grounded approach to machine learning fairness is still at early stages in the literature. In this paper, we discuss current approaches to the topic, formulate general logical desiderata for logics to reason with and about bias, and provide a novel approach.

Reasoning With and About Bias / C. Manganini, G. Primiero (LOGIC, ARGUMENTATION & REASONING). - In: Perspectives on Logics for Data-driven Reasoning / [a cura di] H. Hosni, J. Landes. - Prima edizione. - [s.l] : Springer Cham, 2025 Jan 21. - ISBN 9783031778919. - pp. 127-154 [10.1007/978-3-031-77892-6_7]

Reasoning With and About Bias

C. Manganini
Primo
;
G. Primiero
Ultimo
2025

Abstract

The widespread emergence of phenomena of bias is certainly among the most adverse impacts of new data-intensive sciences and technologies. The causes of such undesirable behaviours must be traced back to data themselves, as well as to certain design choices of machine learning algorithms. The task of modelling bias from a logical point of view requires to extend the vast family of defeasible logics and logics for uncertain reasoning with ones that capture some few, fundamental properties of biased predictions. However, a logically grounded approach to machine learning fairness is still at early stages in the literature. In this paper, we discuss current approaches to the topic, formulate general logical desiderata for logics to reason with and about bias, and provide a novel approach.
Machine learning; Data bias; Algorithmic unfairness; Non-monotonic logics; Uncertainty
Settore PHIL-02/A - Logica e filosofia della scienza
21-gen-2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1139855
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