Human Mobility
Human mobility research aims to understand how people move through space and time, focusing on patterns, predictions, and the implications for urban planning, public health, and transportation. Current research heavily utilizes machine learning, particularly transformer-based models and large language models (LLMs), to analyze trajectory data, generate synthetic mobility data, and predict future movements, often incorporating contextual information like socio-demographics and events. These advancements offer improved accuracy and interpretability in mobility modeling, enabling more effective resource allocation, infrastructure development, and public health interventions. Furthermore, research is actively addressing biases in existing datasets and developing privacy-preserving methods for data analysis and synthesis.
Papers
Enhancing stop location detection for incomplete urban mobility datasets
Margherita Bertè, Rashid Ibrahimli, Lars Koopmans, Pablo Valgañón, Nicola Zomer, Davide Colombi
Mitigating biases in big mobility data: a case study of monitoring large-scale transit systems
Feilong Wang, Xuegang Ban, Peng Chen, Chenxi Liu, Rong Zhao