Bikeshare trip generation in New York City

March 26, 2019

Bikeshare trip generation in New York City, by Robert B. Noland, Michael J. Smart, and Ziye Guo.

In Transportation Research Part A: Policy and Practice, Volume 94, December 2016, Pages 164-181

Cities around the world and in the US are implementing bikesharing systems, which allow users to access shared bicycles for short trips, typically in the urban core. Yet few scholars have examined the determinants of bikeshare station usage using a fine-grained approach. We estimate a series of Bayesian regression models of trip generation at stations, examining the effects bicycle infrastructure, population and employment, land use mix, and transit access separately by season of the year, weekday/weekend, and user type (subscriber versus casual). We find that bikeshare stations located near busy subway stations and bicycle infrastructure see greater utilization, and that greater population and employment generally predict greater usage. Our findings are nuanced, however; for instance, those areas with more residential population are associated with more trips by subscribers and on both weekdays and non-working days; however, the effect is much stronger on non-working days. Additional nuances can be found in how various land use variables affect bikeshare usage. We use our models, based on 2014 data, to forecast the trips generated at new stations opened in 2015. Results suggest there is large variation in predictive power, partly caused by variation in weather, but also by other factors that cannot be predicted. This leads us to the conclusion that the nuances we find in our inferential analysis are more useful for transportation planners.

https://doi.org/10.1016/j.tra.2016.08.030

Recent Posts

Prof. Smart Researches Youth Driver Licensing Determinants

Explaining Youth Driver Licensing Determinants Using XGBoost and SHAP by Kailai Wang, Jonas De Vos, Michael Smart, Sicheng Wang Highlights Examined trend in youth driver licensing between Millennials and GenZ in the US. Used explainable AI approaches to understand...

RAISE-25 Recap: Our Future With AI: Utopian or Dystopian?

Summary Hosted by the Master of Public Informatics (MPI) program, the final round of the second annual RAISE-25 Informatics – Data Science competition was held Friday, April 11, 2025 at the Bloustein School. The competition challenge focused on "Our Future With AI:...

Generative Artificial Intelligence and the Workforce

The proliferation of generative artificial intelligence (GenAI) in the workplace, a type of artificial intelligence capable of generating new content, has fostered growing concerns about how deployment will impact work and workers. While the effects of GenAI on the...

Dr. Williams Studies Telemedicine for Behavioral Health

Improved Access to Behavioral Health Care for Patients in a Large New York City Behavioral Health Clinic by the Transition to Telemedicine Abstract Objective To examine the transition to telemental health within the behavioral health program of a large federally...

NJSDS Launches External Access Program

The New Jersey Statewide Data System (NJSDS) is excited to announce the launch of the NJSDS External Access program, which provides approved researchers the opportunity to access longitudinal administrative data from four New Jersey state agencies: New Jersey...