Data di Pubblicazione:
2024
Citazione:
Data Quality Dimensions for Fair AI / C. Quaresmini, G. Primiero (CEUR WORKSHOP PROCEEDINGS). - In: AEQUITAS 2024 : Fairness and Bias in AI / [a cura di] R. Calegari, V. Dignum, B. O'Sullivan. - [s.l] : CEUR, 2024 Nov. - pp. 1-16 (( convegno 2nd Workshop on Fairness and Bias in AI co-located with 27th European Conference on Artificial Intelligence (ECAI 2024) tenutosi a Santiago de Compostela nel 2024.
Abstract:
Artificial Intelligence (AI) systems are not intrinsically neutral and biases trickle in any type of tech-
nological tool. In particular when dealing with people, the impact of AI algorithms’ technical errors
originating with mislabeled data is undeniable. As they feed wrong and discriminatory classifications,
these systems are not systematically guarded against bias. In this article we consider the problem of
bias in AI systems from the point of view of data quality dimensions. We highlight the limited model
construction of bias mitigation tools based on accuracy strategy, illustrating potential improvements of a
specific tool in gender classification errors occurring in two typically difficult contexts: the classification
of non-binary individuals, for which the label set becomes incomplete with respect to the dataset; and
the classification of transgender individuals, for which the dataset becomes inconsistent with respect
to the label set. Using formal methods for reasoning about the behavior of the classification system in
presence of a changing world, we propose to reconsider the fairness of the classification task in terms of
completeness, consistency, timeliness and reliability, and offer some theoretical results.
Tipologia IRIS:
03 - Contributo in volume
Keywords:
Bias mitigation; Fairness; Information Quality; Mislabeling; Timeliness
Elenco autori:
C. Quaresmini, G. Primiero
Link alla scheda completa:
Link al Full Text:
Titolo del libro:
AEQUITAS 2024 : Fairness and Bias in AI