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Main Authors: Delussu, Federico, Barreras, Francisco, Liao, Yuan, Watts, Duncan J., Alessandretti, Laura
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.31282
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author Delussu, Federico
Barreras, Francisco
Liao, Yuan
Watts, Duncan J.
Alessandretti, Laura
author_facet Delussu, Federico
Barreras, Francisco
Liao, Yuan
Watts, Duncan J.
Alessandretti, Laura
contents GPS mobility data are increasingly used in epidemic modeling, allowing the construction of co-location networks or population flows. These trajectories typically exhibit high temporal sparsity because data collection is opportunistic and tied to phone use. Despite growing awareness of this limitation, the analysis and treatment of biases derived from it have been largely overlooked in existing epidemic modeling studies, raising concerns about the robustness of downstream inferences. We introduce a principled framework to quantify the impact of trajectory sparsity on key epidemic modeling outcomes across different levels of missingness. Our approach leverages a highly-complete dataset that exhibits both near-complete and sparse GPS trajectories. Near-complete trajectories provide baseline epidemic outcomes, while sparse trajectories provide realistic missingness patterns that we impose on the baseline to measure bias. In this way, we show how missing records can result in substantial underestimation of key measures of epidemic intensity, explained not only by the amount of missing data, but by more complex features of data missingness that should be taken into account when designing correction methods. Finally, we propose and evaluate a correction based on inverse probability weighting of network edges before epidemic model calibration, which is shown to reduce bias and parameter misspecification. We also demonstrate this correction on a separate anonymized sample from a commercial GPS mobility dataset and report on its effect. Together, our findings provide a first rigorous quantification of trajectory-sparsity bias in epidemic modeling, offering initial guidance on the treatment of this issue.
format Preprint
id arxiv_https___arxiv_org_abs_2605_31282
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Effect of Mobility Trajectory Sparsity on Epidemic Modeling Outcomes
Delussu, Federico
Barreras, Francisco
Liao, Yuan
Watts, Duncan J.
Alessandretti, Laura
Social and Information Networks
Applications
I.6.4; H.2.8
GPS mobility data are increasingly used in epidemic modeling, allowing the construction of co-location networks or population flows. These trajectories typically exhibit high temporal sparsity because data collection is opportunistic and tied to phone use. Despite growing awareness of this limitation, the analysis and treatment of biases derived from it have been largely overlooked in existing epidemic modeling studies, raising concerns about the robustness of downstream inferences. We introduce a principled framework to quantify the impact of trajectory sparsity on key epidemic modeling outcomes across different levels of missingness. Our approach leverages a highly-complete dataset that exhibits both near-complete and sparse GPS trajectories. Near-complete trajectories provide baseline epidemic outcomes, while sparse trajectories provide realistic missingness patterns that we impose on the baseline to measure bias. In this way, we show how missing records can result in substantial underestimation of key measures of epidemic intensity, explained not only by the amount of missing data, but by more complex features of data missingness that should be taken into account when designing correction methods. Finally, we propose and evaluate a correction based on inverse probability weighting of network edges before epidemic model calibration, which is shown to reduce bias and parameter misspecification. We also demonstrate this correction on a separate anonymized sample from a commercial GPS mobility dataset and report on its effect. Together, our findings provide a first rigorous quantification of trajectory-sparsity bias in epidemic modeling, offering initial guidance on the treatment of this issue.
title The Effect of Mobility Trajectory Sparsity on Epidemic Modeling Outcomes
topic Social and Information Networks
Applications
I.6.4; H.2.8
url https://arxiv.org/abs/2605.31282