Machine learning models in trusted research environments -- understanding operational risks
Felix Ritchie,
Amy Tilbrook,
Christian Cole
et al.
Abstract:IntroductionTrusted research environments (TREs) provide secure access to very sensitive data for research. All TREs operate manual checks on outputs to ensure there is no residual disclosure risk. Machine learning (ML) models require very large amount of data; if this data is personal, the TRE is a well-established data management solution. However, ML models present novel disclosure risks, in both type and scale.
ObjectivesAs part of a series on ML disclosure risk in TREs, this article is intended to introdu… Show more
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