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Activity Number: 588 - GSS/SRMS/SSS Student Paper Award Winners
Type: Topic Contributed
Date/Time: Thursday, August 6, 2020 : 3:00 PM to 4:50 PM
Sponsor: Government Statistics Section
Abstract #312727
Title: Privacy for Spatial Point Process Data
Author(s): Adam Walder*
Companies: Pennsylvania State Unversity
Keywords: Privacy; Spatial; Bayesian Privacy; Conditional Predictive Ordinate; Spatial Disease Data
Abstract:

In this work we develop methods for privatizing spatial location data, such as spatial locations of individual disease cases. We propose two novel Bayesian methods for generating synthetic location data based on log-Gaussian Cox processes (LGCPs). We show that conditional predictive ordinate (CPO) estimates can easily be obtained for point process data. We construct a novel risk metric that utilizes CPO estimates to evaluate individual disclosure risks. We adapt the propensity mean square error pMSE data utility metric for LGCPs. We demonstrate that our synthesis methods offer an improved risk vs. utility balance in comparison to radial synthesis with a case study of Dr. John Snow's cholera outbreak data.


Authors who are presenting talks have a * after their name.

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