Explaining the reasoning behind black-box model predictions while preserving user privacy is a significant challenge. This becomes even more complex in Federated Learning, where legal constraints restrict the data that clients can share with external entities. In this paper, we introduce FastSHAP++, a method that adapts FastSHAP to explain Federated Learning trained models. Unlike existing approaches, FastSHAP++ mitigates client privacy risks by incorporating Differential Privacy into the explanation process and preventing the exchange of sensitive information between clients and external entities. We evaluate the effectiveness of FastSHAP++ testing it on three different datasets, and comparing the explanations with those produced by a centralized explainer with access to clients' training data. Lastly, we study the impact of varying levels of Differential Privacy to analyse the trade-offs between privacy and the quality of the explanations.

Differentially Private FastSHAP for Federated Learning Model Explainability

Bonsignori, Valerio;Naretto, Francesca;
2025

Abstract

Explaining the reasoning behind black-box model predictions while preserving user privacy is a significant challenge. This becomes even more complex in Federated Learning, where legal constraints restrict the data that clients can share with external entities. In this paper, we introduce FastSHAP++, a method that adapts FastSHAP to explain Federated Learning trained models. Unlike existing approaches, FastSHAP++ mitigates client privacy risks by incorporating Differential Privacy into the explanation process and preventing the exchange of sensitive information between clients and external entities. We evaluate the effectiveness of FastSHAP++ testing it on three different datasets, and comparing the explanations with those produced by a centralized explainer with access to clients' training data. Lastly, we study the impact of varying levels of Differential Privacy to analyse the trade-offs between privacy and the quality of the explanations.
2025
Settore INF/01 - Informatica
Settore INFO-01/A - Informatica
2025 International Joint Conference on Neural Networks, IJCNN 2025
Pontifical Gregorian University, ita
2025
Proceedings of the International Joint Conference on Neural Networks
Institute of Electrical and Electronics Engineers Inc.
Explainable AI; Federated Learning; Privacy-Preserving Machine Learning
   It takes two to tango: a synergistic approach to human-machine decision making
   TANGO
   European Commission
   Horizon Europe Framework Programme - HORIZON Research and Innovation Actions
   101120763
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/168189
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