The increasing availability of online data has meant that data-driven models have been applied to more and more tasks in recent years. In some domains and/or applications, such data must be protected before they are used. Hence, one of the problems only partially addressed in the literature is to determine how the performance of Machine Learning models is affected by data protection. More important, the explainability of the results of such models as a consequence of data protection has been even less investigated to date. In this paper, we refer to this very problem by considering non-perturbative data protection, and by studying the explainability of supervised models applied to the data classification task.

Explainability of the Effects of Non-Perturbative Data Protection in Supervised Classification / S. Locci, L. Di Caro, G. Livraga, M. Viviani - In: 2023 IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT)[s.l] : IEEE, 2023 Dec. - ISBN 979-8-3503-0918-8. - pp. 402-408 (( convegno IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT) tenutosi a Venezia nel 2023 [10.1109/wi-iat59888.2023.00066].

Explainability of the Effects of Non-Perturbative Data Protection in Supervised Classification

G. Livraga
Penultimo
;
2023

Abstract

The increasing availability of online data has meant that data-driven models have been applied to more and more tasks in recent years. In some domains and/or applications, such data must be protected before they are used. Hence, one of the problems only partially addressed in the literature is to determine how the performance of Machine Learning models is affected by data protection. More important, the explainability of the results of such models as a consequence of data protection has been even less investigated to date. In this paper, we refer to this very problem by considering non-perturbative data protection, and by studying the explainability of supervised models applied to the data classification task.
Explainability; Data Protection; Machine Learning; Privacy; Classification
Settore INF/01 - Informatica
   SEcurity and RIghts in the CyberSpace (SERICS)
   SERICS
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   codice identificativo PE00000014

   KURAMi: Knowledge-based, explainable User empowerment in Releasing private data and Assessing Misinformation in online environments
   KURAMI
   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
   20225WTRFN_003

   Machine Learning-based, Networking and Computing Infrastructure Resource Management of 5G and beyond Intelligent Networks (MARSAL)
   MARSAL
   EUROPEAN COMMISSION
   H2020
   101017171

   Green responsibLe privACy preservIng dAta operaTIONs
   GLACIATION
   EUROPEAN COMMISSION
   101070141
dic-2023
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1079470
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