Public Transit
Public transit research centers on optimizing efficiency, accessibility, and resilience of urban transportation systems. Current efforts focus on developing sophisticated predictive models, often employing machine learning algorithms like neural networks (including graph convolutional and transformer architectures) and large language models, to forecast demand, manage disruptions, and improve route planning. These advancements aim to enhance both passenger experience and operational efficiency, impacting urban planning, resource allocation, and the development of sustainable transportation solutions. Furthermore, research emphasizes equity considerations, aiming to ensure fair and accessible transit for all socioeconomic groups.
Papers
Transit Pulse: Utilizing Social Media as a Source for Customer Feedback and Information Extraction with Large Language Model
Jiahao Wang, Amer Shalaby
DST-TransitNet: A Dynamic Spatio-Temporal Deep Learning Model for Scalable and Efficient Network-Wide Prediction of Station-Level Transit Ridership
Jiahao Wang, Amer Shalaby