Access the full text.
Sign up today, get DeepDyve free for 14 days.
Yan-jie Ji, Xinwei Ma, Mingyuan Yang, Yuchuan Jin, Liangpeng Gao (2018)
Exploring Spatially Varying Influences on Metro-Bikeshare Transfer: A Geographically Weighted Poisson Regression ApproachSustainability, 10
Gil Tal, S. Handy (2010)
Travel behavior of immigrants: An analysis of the 2001 National Household Transportation SurveyTransport Policy, 17
Ying Long, Xingjian Liu, Jiangping Zhou, Y. Chai (2015)
Early Birds, Night Owls, and Tireless/Recurring Itinerants: An Exploratory Analysis of Extreme Transit Behaviors in Beijing, ChinaArXiv, abs/1502.02056
Transp. Res. C, Emerg. Technol., 95
K. Mohamed, E. Côme, J Baro (2014)
UrbComp
A. Briand, E. Côme, M. Trépanier, L. Oukhellou (2017)
Analyzing year-to-year changes in public transport passenger behaviour using smart card dataTransportation Research Part C-emerging Technologies, 79
Joon-Kyu Lee, K. Yoo, K. Song (2016)
A study on travelers' transport mode choice behavior using the mixed logit model: A case study of the Seoul-Jeju routeJournal of Air Transport Management, 56
Marie-Pier Pelletier, M. Trépanier, C. Morency (2011)
Smart card data use in public transit: A literature reviewTransportation Research Part C-emerging Technologies, 19
Pejvak Oghazi, R. Mostaghel (2018)
Circular business model challenges and lessons learned - An industrial perspectiveSustainability, 10
Habitat Int., 57
Y. Jun (2011)
Research on Design Scheme of Metro Transfer Station with Transfer on One PlatformJournal of Railway Engineering Society
E. Legara, C. Monterola (2015)
Inferring passenger types from commuter eigentravel matricesTransportmetrica B: Transport Dynamics, 6
W. Kuhlman (2015)
The construction of purpose-specific OD matrices using public transport smart card data
Jiangping Zhou, E. Murphy, Ying Long (2014)
Commuting efficiency in the Beijing metropolitan area: an exploration combining smartcard and travel survey dataJournal of Transport Geography, 41
F. Devillaine, M. Munizaga, M. Trépanier (2012)
Detection of Activities of Public Transport Users by Analyzing Smart Card DataTransportation Research Record, 2276
Yang Liu, Yan-jie Ji, Zhuangbin Shi, Liangpeng Gao (2018)
The Influence of the Built Environment on School Children’s Metro Ridership: An Exploration Using Geographically Weighted Poisson Regression ModelsSustainability
S. Medina (2016)
Inferring weekly primary activity patterns using public transport smart card data and a household travel surveyTravel behaviour and society, 12
Zhibin Li, Wei Wang, Chen Yang, Guojun Jiang (2013)
Exploring the causal relationship between bicycle choice and trip chain patternTransport Policy, 29
(2015)
Nanjing national economic and social development statistics bulletin
Jie Bao, Pan Liu, X. Qin, Huaguo Zhou (2018)
Understanding the effects of trip patterns on spatially aggregated crashes with large-scale taxi GPS data.Accident; analysis and prevention, 120
Takahiko Kusakabe, Y. Asakura (2014)
Behavioural data mining of transit smart card data: A data fusion approachTransportation Research Part C-emerging Technologies, 46
Mingwei He, Shengchuan Zhao, Mingwei He (2016)
Tolerance threshold of commuting time: evidence from Kunming, ChinaJournal of Transport Geography, 57
M. Mahrsi, E. Côme, Johanna Baro, L. Oukhellou (2014)
Understanding Passenger Patterns in Public Transit Through Smart Card and Socioeconomic Data: A case study in Rennes, France
Inês Frade, A. Ribeiro (2014)
Bicycle sharing systems demandProcedia - Social and Behavioral Sciences, 111
Lu Bai, Pan Liu, Ching-yao Chan, Zhibin Li (2017)
Estimating level of service of mid-block bicycle lanes considering mixed traffic flowTransportation Research Part A-policy and Practice, 101
Ying Long, J. Thill (2013)
Combining smart card data and household travel survey to analyze jobs-housing relationships in BeijingComput. Environ. Urban Syst., 53
Comput. Sci., 6
Transp. Res. A, Policy Pract., 101
(2017)
Understanding passenger patterns
C.M. Schneider, C. Rudloff, D. Bauer (2013)
ACM SIGKDD Int. Workshop on Urban Computing
C. Morency, M. Trépanier, B. Agard (2007)
Measuring transit use variability with smart-card dataTransport Policy, 14
Xiaolei Ma, Yao-Jan Wu, Yinhai Wang, Feng Chen, Jianfeng Liu (2013)
Mining smart card data for transit riders’ travel patternsTransportation Research Part C-emerging Technologies, 36
C. Schneider, C. Rudloff, D. Bauer, Marta González (2013)
Daily travel behavior: lessons from a week-long survey for the extraction of human mobility motifs related information
Jie Bao, Pan Liu, Hao Yu, Chengcheng Xu (2017)
Incorporating twitter-based human activity information in spatial analysis of crashes in urban areas.Accident; analysis and prevention, 106
Yihong Wang, G. Correia, E. Romph, H. Timmermans (2017)
Using metro smart card data to model location choice of after-work activities : An application to ShanghaiJournal of Transport Geography, 63
J. Mattson (2012)
Travel Behavior and Mobility of Transportation-Disadvantaged Populations: Evidence from the National Household Travel Survey
Chengcheng Xu, Junyi Ji, Pan Liu (2018)
The station-free sharing bike demand forecasting with a deep learning approach and large-scale datasetsTransportation Research Part C: Emerging Technologies
Yuyang Zhou, Lin Yao, Yu Jiang, Yanyan Chen, Yi Gong (2015)
GIS-Based Commute Analysis Using Smart Card Data: A Case Study of Multi-Mode Public Transport for Smart City
L. Kieu, A. Bhaskar, E. Chung (2015)
Passenger Segmentation Using Smart Card DataIEEE Transactions on Intelligent Transportation Systems, 16
Xiaolei Ma, Congcong Liu, H. Wen, Yunpeng Wang, Yao-Jan Wu (2017)
Understanding commuting patterns using transit smart card dataJournal of Transport Geography, 58
Meisy Ortega-Tong (2013)
Classification of London's public transport users using smart card data
IET Intelligent Transport Systems – Wiley
Published: Oct 1, 2019
Keywords: ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ; ;
You can share this free article with as many people as you like with the url below! We hope you enjoy this feature!
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.