Data di Pubblicazione:
2025
Citazione:
PriSM: A Privacy-Friendly Support Vector Machine / M. Barbato, A. Ceselli, S. De Capitani Di Vimercati, S. Foresti, P. Samarati (LECTURE NOTES IN COMPUTER SCIENCE). - In: Computer Security - ESORICS 2025 / [a cura di] V. Nicomette, A. Benzekri, N. Boulahia-Cuppens, J. Vaidya. - [s.l] : Springer, 2025. - ISBN 9783032078834. - pp. 62-82 (( Intervento presentato al 30. convegno European Symposium on Research in Computer Security ( Part 1) : September 22–24 tenutosi a Toulouse nel 2025 [10.1007/978-3-032-07884-1_4].
Abstract:
Today’s society is witnessing not only an evergrowing depen-
dency on data, but also an increasingly pervasiveness of related analytics
and machine learning applications. From business to leisure, the avail-
ability of services providing answers to questions brings great benefits in
diverse domains. On the other side of the coin, the need to provide input
data that the services need to compute a response. However, some data
may be considered sensitive or confidential and users would legitimately
be reluctant to release them to third parties.
Considering classification tasks in machine learning applications, we in-
troduce our PriSM (Privacy-friendly Support vector Machine) approach
for computing a privacy-friendly model. PriSM anticipates the training
phase of the classifier with a phase for discovering correlations among at-
tributes that can indirectly expose sensitive information. It then trains
the classifier excluding from consideration not only sensitive attributes
but also other sets of attributes that have been learned as correlated to
them. The result is a privacy-friendly classifier that does not require any
of such information as input from the users. Our experimental evaluation
on both synthetic and real-world datasets confirms the effectiveness of
PriSM in protecting privacy while maintaining classification accuracy.
Tipologia IRIS:
03 - Contributo in volume
Keywords:
PriSM; privacy-friendly classifier; sensitive attribute; sensi-
tive correlation
Elenco autori:
M. Barbato, A. Ceselli, S. De Capitani Di Vimercati, S. Foresti, P. Samarati
Link alla scheda completa:
Titolo del libro:
Computer Security - ESORICS 2025