Published June 22, 2017 | Version v1
Conference paper Open

Privacy-Preserving Outlier Detection for Data Streams

  • 1. SAP Research Karlsruhe
  • 2. University of Waterloo

Description

In cyber-physical systems sensors data should be anonymized at the source. Local data perturbation with differential privacy guarantees can be used, but the resulting utility is often (too) low. In this paper we contribute an algorithm that combines local, differentially private data perturbation of sensor streams with highly accurate outlier detection. We evaluate our algorithm on synthetic data. In
our experiments we obtain an accuracy of 80% with a differential privacy value of \epsilon = 0.1 for well separated outliers.

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DBSec17_Privacy-Preserving Outlier Detection for Data Streams.pdf

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Additional details

Funding

European Commission
C3ISP - Collaborative and Confidential Information Sharing and Analysis for Cyber Protection 700294
European Commission
PANORAMIX - Privacy and Accountability in Networks via Optimized Randomized Mix-nets 653497