Privacy-Preserving Synthetic Dataset of Individual Daily Trajectories for City-Scale Mobility Analytics
Jun'ichi Ozaki, Ryosuke Susuta, Takuhiro Moriyama, Yohei Shida

TL;DR
This paper introduces a method to generate realistic, privacy-preserving synthetic daily mobility trajectories from aggregated data, enabling city-scale analysis without risking individual privacy.
Contribution
It presents a novel multi-objective optimization framework that reconstructs human mobility patterns using only aggregated OD data and behavioral constraints.
Findings
High fidelity reproduction of dwell-travel time distributions
Visit frequency distributions closely match real data
OD flow deviations stay within natural fluctuations
Abstract
Urban mobility data are indispensable for urban planning, transportation demand forecasting, pandemic modeling, and many other applications; however, individual mobile phone-derived Global Positioning System traces cannot generally be shared with third parties owing to severe re-identification risks. Aggregated records, such as origin-destination (OD) matrices, offer partial insights but fail to capture the key behavioral properties of daily human movement, limiting realistic city-scale analyses. This study presents a privacy-preserving synthetic mobility dataset that reconstructs daily trajectories from aggregated inputs. The proposed method integrates OD flows with two complementary behavioral constraints: (1) dwell-travel time quantiles that are available only as coarse summary statistics and (2) the universal law for the daily distribution of the number of visited locations.…
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