Neural Architecture and Feature Search for Predicting the Ridership of Public Transportation Routes

Abstract

Accurately predicting the ridership of public-transit routes provides substantial benefits to both transit agencies, who can dispatch additional vehicles proactively before the vehicles that serve a route become crowded, and to passengers, who can avoid crowded vehicles based on publicly available predictions. The spread of the coronavirus disease has further elevated the importance of ridership prediction as crowded vehicles now present not only an inconvenience but also a public-health risk.

Year of Publication
2022
Conference Name
2022 IEEE International Conference on Smart Computing (SMARTCOMP)
Date Published
06