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Safe machine learning model release from Trusted Research Environments: The SACRO-ML package

Safe machine learning model release from Trusted Research Environments: The SACRO-ML package

来源:Arxiv_logoArxiv
英文摘要

We present SACRO-ML, an integrated suite of open source Python tools to facilitate the statistical disclosure control (SDC) of machine learning (ML) models trained on confidential data prior to public release. SACRO-ML combines (i) a SafeModel package that extends commonly used ML models to provide ante-hoc SDC by assessing the vulnerability of disclosure posed by the training regime; and (ii) an Attacks package that provides post-hoc SDC by rigorously assessing the empirical disclosure risk of a model through a variety of simulated attacks after training. The SACRO-ML code and documentation are available under an MIT license at https://github.com/AI-SDC/SACRO-ML

Jim Smith、Alba Crespi-Boixader、Richard J. Preen、Andrew McCarthy、Maha Albashir、Christian Cole、James Liley、Jost Migenda、Shahzad Mumtaz、Simon Rogers、Yola Jones

计算技术、计算机技术

Jim Smith,Alba Crespi-Boixader,Richard J. Preen,Andrew McCarthy,Maha Albashir,Christian Cole,James Liley,Jost Migenda,Shahzad Mumtaz,Simon Rogers,Yola Jones.Safe machine learning model release from Trusted Research Environments: The SACRO-ML package[EB/OL].(2025-08-01)[2025-08-11].https://arxiv.org/abs/2212.01233.点此复制

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