This content is not included in your SAE MOBILUS subscription, or you are not logged in.

Pick-Up Time Analysis and Prediction for Carsharing Users Based on Decision Tree

Journal Article
13-03-02-0010
ISSN: 2640-642X, e-ISSN: 2640-6438
Published February 03, 2022 by SAE International in United States
Pick-Up Time Analysis and Prediction for Carsharing Users Based on
                    Decision Tree
Sector:
Citation: Sai, Q., Bi, J., Wang, Y., Zhi, R. et al., "Pick-Up Time Analysis and Prediction for Carsharing Users Based on Decision Tree," SAE J. STEEP 3(2):115-127, 2022, https://doi.org/10.4271/13-03-02-0010.
Language: English

References

  1. Abbasi , S. , Ko , J. , and Kim , J. Carsharing Station Location and Demand: Identification of Associated Factors through Heckman Selection Models Journal of Cleaner Production 279 1 2020 123846
  2. Ampudia-Renuncio , M. , Guirao , B. , Molina-Sánchez , R. et al. Understanding the Spatial Distribution of Free-Floating Carsharing in Cities: Analysis of the New Madrid Experience through a Web-Based Platform Cities 98 2020 102593
  3. Niels , T. and Bogenberger , K. Booking Behavior of Free-Floating Carsharing Users Transportation Research Record: Journal of the Transportation Research Board 2650 1 2017 123 132
  4. Wu , C. , Vine , S.L. , Sivakumar , A. et al. Dynamic Pricing of Free-Floating Carsharing Networks with Sensitivity to Travellers’ Attitudes towards Risk Transportation 2021 1 24 https://doi.org/10.1007/s11116-021-10190-8
  5. Schmöller , S. , Weikl , S. , Müller , J. , Bogenberger , K. et al. Empirical Analysis of Free-Floating Carsharing Usage: The Munich and Berlin Case Transportation Research Part C: Emerging Technologies 56 2015 34 51
  6. Yoon , T. , Cherry , C.R. , and Jones , L.R. One-Way and Round-Trip Carsharing: A Stated Preference Experiment in Beijing Transportation Research Part D: Transport & Environment 53 2017 102 114
  7. Zoepf , S.M. and Keith , D.R. User Decision-Making and Technology Choices in the U.S. Carsharing Market Transport Policy 51 2016 150 157
  8. Zhang , S. , Sun , H. , Lv , Y. et al. Day-to-Day Dynamics of Traveler Learning Behavior and the Incentivization Scheme of the Operator for One-Way Carsharing Services Computers & Industrial Engineering 155 2021 107170
  9. Feng , X. , Sun , H. , Wu , J. et al. Trip Chain Based Usage Patterns Analysis of the Round-Trip Carsharing System: A Case Study in Beijing Transportation Research Part A: Policy and Practice 140 2020 190 203
  10. Shaheen , S. , Cano , L. , and Camel , M. Exploring Electric Vehicle Carsharing as a Mobility Option for Older Adults: A Case Study of a Senior Adult Community in the San Francisco Bay Area Int J Sustain Transp 10 5 2015 406 417
  11. Wagner , S. , Brandt , T. , and Neumann , D. Data Analytics in Free-Floating Carsharing: Evidence from the City of Berlin 48th Hawaii International Conference on System Sciences, 2015 Kauai, HI 2015 897 907
  12. Kang , J. , Hwang , K. , and Park , S. Finding Factors that Influence Carsharing Usage: Case Study in Seoul Sustainability 8 2016 8 709
  13. Jian , S. , Hossein Rashidi , T. , Wijayaratna , K.P. et al. A Spatial Hazard-Based Analysis for Modelling Vehicle Selection in Station-Based Carsharing Systems Transportation Research Part C: Emerging Technologies 72 2016 130 142
  14. Jian , S. , Rashidi , T.H. , and Dixit , V. An Analysis of Carsharing Vehicle Choice and Utilization Patterns Using Multiple Discrete-Continuous Extreme Value (MDCEV) Models Transportation Research Part A: Policy and Practice 103 2017 362 376
  15. Bi , J. , Zhi , R. , Xie , D.F. et al. Capturing the Characteristics of Car-Sharing Users: Data-Driven Analysis and Prediction Based on Classification Journal of Advanced Transportation 2020 6 2020 1 11
  16. Rhee , J. , Alfian , G. , and Yoon , B. Application of Simulation Method and Regression Analysis to Optimize Car Operations in Carsharing Services: A Case Study in South Korea Journal of Public Transportation 17 2014 121 160
  17. Müller , J. , Correia , G. , and Bogenberger , K. An Explanatory Model Approach for the Spatial Distribution of Free-Floating Carsharing Bookings: A Case-Study of German Cities Sustainability 9 7 2017 1290
  18. Habib , K.M.N. , Morency , C. , Islam , M.T. et al. Modelling Users’ Behavior of a Carsharing Program: Application of a Joint Hazard and Zero Inflated Dynamic Ordered Probability Model Transportation Research Part A: Policy and Practice 46 2 2012 241 254
  19. Sai , Q. , Bi , J. , Xie , D. et al. Identifying and Predicting the Expenditure Level Characteristics of Car-Sharing Users Based on the Empirical Data Sustainability 11 23 2019 6689
  20. Martin , L. and Minner , S. Feature-Based Selection of Carsharing Relocation Modes Transportation Research Part E: Logistics and Transportation Review 149 2021 102270
  21. Qian , C. , Li , W. , Ding , M. et al. Mining Carsharing Use Patterns from Rental Data: A Case Study of Chefenxiang in Hangzhou, China Transportation Research Procedia 25 2017 2583 2602
  22. Hui , Y. , Wang , W. , Ding , M. et al. Behavior Patterns of Long-Term Car-Sharing Users in China* Transportation Research Procedia 25 2017 4662 4678
  23. Liu , Z. , Qin , X. , Huang , W. et al. Effect of Time Intervals on K-Nearest Neighbors Model for Short-Term Traffic Flow Prediction Promet Traffic &Transportation 31 2 2019 129 139
  24. Zhi , R. , Zhang , J. , Bi , J. et al. Characteristic Analysis and Prediction Modeling of Car-Sharing User Rental Based on Fisher Ordered Clustering IOP Conference Series: Materials Science and Engineering 688 2019 033019
  25. Hao , C. , Qiu , J. , and Li , F. Methodology for Analyzing and Predicting the Runoff and Sediment into a Reservoir Water 9 6 2017 440 440
  26. Ochiai , Y. , Masuma , Y. , and Tomii , N. Improvement of Timetable Robustness by Analysis of Drivers’ Operation Based on Decision Trees Journal of Rail Transport Planning & Management 9 2019 57 65
  27. Chen , J. , Qi , K. , and Zhu , S. Traffic Travel Pattern Recognition Based on Sparse Global Positioning System Trajectory Data International Journal of Distributed Sensor Networks 16 2020 1 26
  28. Jiang , X. , Abdel-Aty , M. , Hu , J. et al. Investigating Macro-Level Hot Zone Identification and Variable Importance Using Big Data: A Random Forest Model Approach Neurocomputing 181 2016 53 63

Cited By