TY - JOUR
T1 - A causal intervention framework for synthesizing mobility data and evaluating predictive neural networks
AU - Hong, Ye
AU - Xin, Yanan
AU - Dirmeier, Simon
AU - Perez-Cruz, Fernando
AU - Raubal, Martin
PY - 2025
Y1 - 2025
N2 - Deep neural networks are increasingly utilized in mobility prediction tasks, yet their intricate internal workings pose challenges for interpretability, especially in comprehending how various aspects of mobility behavior affect predictions. This study introduces a causal intervention framework to assess the impact of mobility-related factors on neural networks designed for next location prediction — a task focusing on predicting the immediate next location of an individual. To achieve this, we employ individual mobility models to synthesize location visit sequences and control behavior dynamics by intervening in their data generation process. We evaluate the interventional location sequences using mobility metrics and input them into well-trained networks to analyze performance variations. The results demonstrate the effectiveness in producing location sequences with distinct mobility behaviors, thereby facilitating the simulation of diverse yet realistic spatial and temporal changes. These changes result in performance fluctuations in next location prediction networks, revealing impacts of critical mobility behavior factors, including sequential patterns in location transitions, proclivity for exploring new locations, and preferences in location choices at population and individual levels. The gained insights hold value for the real-world application of mobility prediction networks, and the framework is expected to promote the use of causal inference to enhance the interpretability and robustness of neural networks in mobility applications.
AB - Deep neural networks are increasingly utilized in mobility prediction tasks, yet their intricate internal workings pose challenges for interpretability, especially in comprehending how various aspects of mobility behavior affect predictions. This study introduces a causal intervention framework to assess the impact of mobility-related factors on neural networks designed for next location prediction — a task focusing on predicting the immediate next location of an individual. To achieve this, we employ individual mobility models to synthesize location visit sequences and control behavior dynamics by intervening in their data generation process. We evaluate the interventional location sequences using mobility metrics and input them into well-trained networks to analyze performance variations. The results demonstrate the effectiveness in producing location sequences with distinct mobility behaviors, thereby facilitating the simulation of diverse yet realistic spatial and temporal changes. These changes result in performance fluctuations in next location prediction networks, revealing impacts of critical mobility behavior factors, including sequential patterns in location transitions, proclivity for exploring new locations, and preferences in location choices at population and individual levels. The gained insights hold value for the real-world application of mobility prediction networks, and the framework is expected to promote the use of causal inference to enhance the interpretability and robustness of neural networks in mobility applications.
KW - Causal intervention
KW - Domain shift
KW - Individual mobility simulation
KW - Mobility behavior
KW - Next location prediction
UR - http://www.scopus.com/inward/record.url?scp=105004187129&partnerID=8YFLogxK
U2 - 10.1016/j.trip.2025.101398
DO - 10.1016/j.trip.2025.101398
M3 - Article
AN - SCOPUS:105004187129
SN - 2590-1982
VL - 31
JO - Transportation Research Interdisciplinary Perspectives
JF - Transportation Research Interdisciplinary Perspectives
M1 - 101398
ER -