Discrete Distribution Estimation under Local Privacy

24 Feb 2016Peter KairouzKeith BonawitzDaniel Ramage

The collection and analysis of user data drives improvements in the app and web ecosystems, but comes with risks to privacy. This paper examines discrete distribution estimation under local privacy, a setting wherein service providers can learn the distribution of a categorical statistic of interest without collecting the underlying data... (read more)

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