Data di Pubblicazione:
2026
Citazione:
Trustworthiness Preservation by Copies of Machine Learning Systems / L. Ceragioli, G. Primiero. - In: INTERNATIONAL JOURNAL OF APPROXIMATE REASONING. - ISSN 0888-613X. - (2026). [Epub ahead of print] [10.1016/j.ijar.2026.109638]
Abstract:
A common practice of ML systems development concerns the training of the
same model under different data sets, and the use of the same (training and
test) sets for different learning models. The first case is a desirable prac-
tice for identifying high quality and unbiased training conditions. The latter
case coincides with the search for optimal models under a common dataset
for training. These differently obtained systems have been considered akin
to copies. In the quest for responsible AI, a legitimate but hardly investi-
gated question is how to verify that trustworthiness is preserved by copies.
In this paper we introduce a calculus to model and verify probabilistic com-
plex queries over data and define four distinct notions: Justifiably, Equally,
Weakly and Almost Trustworthy which can be checked analysing the (par-
tial) behaviour of the copy with respect to its original. We provide a study
of the relations between these notions of trustworthiness, and how they com-
pose with each other and under logical operations. The aim is to offer a
computational tool to check the trustworthiness of possibly complex systems
copied from an original whose behavour is known.
Tipologia IRIS:
01 - Articolo su periodico
Keywords:
Artificial Intelligence; Machine Learning; Trustworthiness
Elenco autori:
L. Ceragioli, G. Primiero
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