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Most Influential SIGMOD 2018 Paper · 2026-03 edition

Marginal Release Under Local Differential Privacy

Graham Cormode; Tejas Kulkarni; Divesh Srivastava

Venue
ACM SIGMOD Conference (SIGMOD) 2018
Recognition
Most Influential SIGMOD 2018 Paper (Rank No. 15)
Edition
2026-03
Impact factor
4
Certificate ID
d3b9b79a098dd773

Abstract

Many analysis and machine learning tasks require the availability of marginal statistics on multidimensional datasets while providing strong privacy guarantees for the data subjects. Applications for these statistics range from finding correlations in the data to fitting sophisticated prediction models. In this paper, we provide a set of algorithms for materializing marginal statistics under the strong model of local differential privacy. We prove the first tight theoretical bounds on the accuracy of marginals compiled under each approach, perform empirical evaluation to confirm these bounds, and evaluate them for tasks such as modeling and correlation testing. Our results show that releasing information based on (local) Fourier transformations of the input is preferable to alternatives based directly on (local) marginals.

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