2021
DOI: 10.3390/make3040039
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An Assessment of the Application of Private Aggregation of Ensemble Models to Sensible Data

Abstract: This paper explores the use of Private Aggregation of Teacher Ensembles (PATE) in a setting where students have their own private data that cannot be revealed as is to the ensemble. We propose a privacy model that introduces a local differentially private mechanism to protect student data. We implemented and analyzed it in case studies from security and health domains, and the result of the experiment was twofold. First, this model does not significantly affecs predictive capabilities, and second, it unveiled … Show more

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“…PATE and its variants (e.g. [50,88,126,130]) leverage an ensemble (a collection) of so-called teacher models that are trained on disjoint datasets containing sensitive data. These models are not published but instead used as teacher models for a separate student model.…”
Section: Local Dp On Graphsmentioning
confidence: 99%
“…PATE and its variants (e.g. [50,88,126,130]) leverage an ensemble (a collection) of so-called teacher models that are trained on disjoint datasets containing sensitive data. These models are not published but instead used as teacher models for a separate student model.…”
Section: Local Dp On Graphsmentioning
confidence: 99%