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Private Machine Learning via Randomised Response

Published 14 Jan 2020 in cs.LG and stat.ML | (2001.04942v2)

Abstract: We introduce a general learning framework for private machine learning based on randomised response. Our assumption is that all actors are potentially adversarial and as such we trust only to release a single noisy version of an individual's datapoint. We discuss a general approach that forms a consistent way to estimate the true underlying machine learning model and demonstrate this in the case of logistic regression.

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