DPTraj-PM: Differentially Private Trajectory Synthesis Using Prefix Tree and Markov Process
Nana Wang, Mohan Kankanhalli

TL;DR
DPTraj-PM is a novel method that synthesizes privacy-preserving trajectory data using a combination of prefix trees and Markov processes under differential privacy, maintaining data utility for analysis.
Contribution
It introduces a new approach combining prefix trees and Markov models to generate differentially private trajectory data with high utility.
Findings
Outperforms existing methods in data utility on real datasets
Successfully preserves mobility patterns and variability
Ensures strong privacy guarantees under differential privacy
Abstract
The increasing use of GPS-enabled devices has generated a large amount of trajectory data. These data offer us vital insights to understand the movements of individuals and populations, benefiting a broad range of applications from transportation planning to epidemic modeling. However, improper release of trajectory data is increasing concerns on individual privacy. Previous attempts either lack strong privacy guarantees, or fail to preserve sufficient basic characteristics of the original data. In this paper, we propose DPTraj-PM, a method to synthesize trajectory dataset under the differential privacy (DP) framework while ensures high data utility. Based on the assumption that an individual's trajectory could be mainly determined by the initial trajectory segment (which depicts the starting point and the initial direction) and the next location point, DPTraj-PM discretizes the raw…
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Taxonomy
TopicsCryptography and Data Security · Privacy-Preserving Technologies in Data
