Sammanfattning

Interpretability has become a crucial component in the Machine Learning (ML) domain. This is particularly important in the context of medical and health applications, where the underlying reasons behind how an ML model makes a certain decision are as important as the decision itself for the experts. However, interpreting an ML model based on limited local data may potentially lead to inaccurate conclusions. On the other hand, centralized decision making and interpretability, by transferring the data to a centralized server, may raise privacy concerns due to the sensitivity of personal/medical data in such applications.

In this paper, we propose a federated interpretability scheme based on SHAP (SHapley Additive exPlanations) value and DeepLIFT (Deep Learning Important FeaTures) to interpret ML models, without sharing sensitive data and in a privacy-preserving fashion. Our proposed federated interpretability scheme is a decentralized framework for interpreting ML models, where data remains on local devices, and only values that do not directly describe the raw data are aggregated in a privacy-preserving fashion to interpret the model.
Originalspråkengelska
Titel på värdpublikationBig Data
FörlagIEEE - Institute of Electrical and Electronics Engineers Inc.
StatusAccepted/In press - 2024
EvenemangIEEE International Conference on Big Data, BigData 2024 - Washington, USA
Varaktighet: 2024 dec. 152024 dec. 18

Konferens

KonferensIEEE International Conference on Big Data, BigData 2024
Land/TerritoriumUSA
OrtWashington
Period2024/12/152024/12/18

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