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arxiv: 1712.01524 · v1 · pith:KILM3GGTnew · submitted 2017-12-05 · 💻 cs.CR · cs.DS

Collecting Telemetry Data Privately

classification 💻 cs.CR cs.DS
keywords collectiondatatelemetrymechanismsalgorithmscounterprivacyrepeated
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The collection and analysis of telemetry data from users' devices is routinely performed by many software companies. Telemetry collection leads to improved user experience but poses significant risks to users' privacy. Locally differentially private (LDP) algorithms have recently emerged as the main tool that allows data collectors to estimate various population statistics, while preserving privacy. The guarantees provided by such algorithms are typically very strong for a single round of telemetry collection, but degrade rapidly when telemetry is collected regularly. In particular, existing LDP algorithms are not suitable for repeated collection of counter data such as daily app usage statistics. In this paper, we develop new LDP mechanisms geared towards repeated collection of counter data, with formal privacy guarantees even after being executed for an arbitrarily long period of time. For two basic analytical tasks, mean estimation and histogram estimation, our LDP mechanisms for repeated data collection provide estimates with comparable or even the same accuracy as existing single-round LDP collection mechanisms. We conduct empirical evaluation on real-world counter datasets to verify our theoretical results. Our mechanisms have been deployed by Microsoft to collect telemetry across millions of devices.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Fundamental Limitations of Favorable Privacy-Utility Guarantees for DP-SGD

    cs.LG 2026-01 unverdicted novelty 6.0

    Shuffled DP-SGD requires σ ≥ 1/√(2 ln M) or κ ≥ (1/√8)(1 - 1/√(4π ln M)) to limit adversarial advantage, preventing strong privacy and high utility simultaneously.