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Main Authors: Uğurel, Ekin, Chen, Cynthia, Lee, Brian H. Y., Rodrigues, Filipe
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.03924
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author Uğurel, Ekin
Chen, Cynthia
Lee, Brian H. Y.
Rodrigues, Filipe
author_facet Uğurel, Ekin
Chen, Cynthia
Lee, Brian H. Y.
Rodrigues, Filipe
contents Inferring sociodemographic attributes from mobility data could help transportation planners better leverage passively collected datasets, but this task remains difficult due to weak and inconsistent relationships between mobility patterns and sociodemographic traits, as well as limited generalization across contexts. We address these challenges from three angles. First, to improve predictive accuracy while retaining interpretability, we introduce a behaviorally grounded set of higher-order mobility descriptors based on directed mobility graphs. These features capture structured patterns in trip sequences, travel modes, and social co-travel, and significantly improve prediction of age, gender, income, and household structure over baselines features. Second, we introduce metrics and visual diagnostic tools that encourage evenness between model confidence and accuracy, enabling planners to quantify uncertainty. Third, to improve generalization and sample efficiency, we develop a multitask learning framework that jointly predicts multiple sociodemographic attributes from a shared representation. This approach outperforms single-task models, particularly when training data are limited or when applying models across different time periods (i.e., when the test set distribution differs from the training set).
format Preprint
id arxiv_https___arxiv_org_abs_2511_03924
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On Predicting Sociodemographics from Mobility Signals
Uğurel, Ekin
Chen, Cynthia
Lee, Brian H. Y.
Rodrigues, Filipe
Machine Learning
Inferring sociodemographic attributes from mobility data could help transportation planners better leverage passively collected datasets, but this task remains difficult due to weak and inconsistent relationships between mobility patterns and sociodemographic traits, as well as limited generalization across contexts. We address these challenges from three angles. First, to improve predictive accuracy while retaining interpretability, we introduce a behaviorally grounded set of higher-order mobility descriptors based on directed mobility graphs. These features capture structured patterns in trip sequences, travel modes, and social co-travel, and significantly improve prediction of age, gender, income, and household structure over baselines features. Second, we introduce metrics and visual diagnostic tools that encourage evenness between model confidence and accuracy, enabling planners to quantify uncertainty. Third, to improve generalization and sample efficiency, we develop a multitask learning framework that jointly predicts multiple sociodemographic attributes from a shared representation. This approach outperforms single-task models, particularly when training data are limited or when applying models across different time periods (i.e., when the test set distribution differs from the training set).
title On Predicting Sociodemographics from Mobility Signals
topic Machine Learning
url https://arxiv.org/abs/2511.03924