References
- Alonso-Mora, J., S. Samaranayake, A. Wallar, E. Frazzoli, and D. Rus. 2017. “On-Demand High-Capacity Ride-Sharing via Dynamic Trip-Vehicle Assignment.” Proceedings of the National Academy of Sciences of the United States of America 114 (3): 462–467. doi:10.1073/pnas.1611675114.
- Dandl, F., and K. Bogenberger. 2018. “Comparing Future Autonomous Electric Taxis with an Existing Free-Floating Carsharing System.” IEEE Transactions on Intelligent Transportation Systems 1–11. doi:10.1109/TITS.2018.2857208.
- Fagnant, D. J., and K. M. Kockelman. 2014. “The Travel and Environmental Implications of Shared Autonomous Vehicles, Using Agent-Based Model Scenarios.” Transportation Research Part C: Emerging Technologies 40: 1–13. doi:10.1016/j.trc.2013.12.001.
- Frei, C., M. Hyland, and H. S. Mahmassani. 2017. “Flexing Service Schedules: Assessing the Potential for Demand-Adaptive Hybrid Transit via a Stated Preference Approach.” Transportation Research Part C: Emerging Technologies 76: 71–89. doi:10.1016/j.trc.2016.12.017.
- Hörl, S., C. Ruch, F. Becker, E. Frazzoli, and K. W. Axhausen. 2017. “Fleet Control Algorithms for Automated Mobility : A Simulation Assessment for Zurich.”Hörl, S., C. Ruch, F. Becker, E. Frazzoli, and K. W. Axhausen. 2017. “Fleet Control Algorithms for Automated Mobility : A Simulation Assessment for Zurich.” Proceedings of the Transportation Research Board 97th Annual Meeting, Washington, DC.
- Hyland, M., and H. S. Mahmassani. 2018. “Dynamic Autonomous Vehicle Fleet Operations: Optimization-Based Strategies to Assign AVs to Immediate Traveler Demand Requests.” Transportation Research Part C: Emerging Technologies 92: 278–297. doi:10.1016/j.trc.2018.05.003.
- Ihler, A., J. Hutchins, and P. Smyth. 2006. “Adaptive Event Detection with Time-Varying Poisson Processes.” Proceedings of the 12th ACM SIGKDD international conference on Knowledge discovery and data mining - KDD ’06, p. 207. doi:10.1145/1150402.1150428.
- Internal Revenue Service. “Standard Mileage Rates.” Accessed 16 October 2018 https://www.irs.gov/tax-professionals/standard-mileage-rates
- Maciejewski, M., J. Bischoff, and K. Nagel. 2016. “An Assignment-Based Approach to Efficient Real-Time City-Scale Taxi Dispatching.” IEEE Intelligent Systems 31 (1): 68–77. doi:10.1109/MIS.2016.2.
- Makridakis, S. 1988. “Metaforecasting : Ways of Improving Forecasting Accuracy and Usefulness.” International Journal of Forecasting 4 (3): 467–491. doi:10.1016/0169-2070(88)90112-4.
- Moreira-Matias, L., J. Gama, M. Ferreira, J. Mendes-Moreira, and L. Damas. 2013. “Predicting Taxi-Passenger Demand Using Streaming Data.” IEEE Transactions on Intelligent Transportation Systems 14 (3): 1393–1402. doi:10.1109/TITS.2013.2262376.
- NYC Taxi & Limousine Commission. TLC Trip Record Data. Accessed 24 July 2018 http://www.nyc.gov/html/tlc/html/about/trip_record_data.shtml
- Pavone, M., S. L. Smith, E. Frazzoli, and D. Rus. 2012a. “Robotic Load Balancing for Mobility-on-Demand Systems.” The International Journal of Robotics Research 31 (7): 839–854. doi:10.1177/0278364912444766.
- Pavone, M., S. L. Smith, E. Frazzoli, and D. Rus. 2012b. “Robotic Load Balancing for Mobility-on-Demand Systems.” International Journal of Robotics Research 31 (7): 839–854. doi:10.1177/0278364912444766.
- Sayarshad, H. R., and J. Y. J. Chow. 2016. “Survey and Empirical Evaluation of Nonhomogeneous Arrival Process Models with Taxi Data.” Journal of Advanced Transportation 50 (7): 1275–1294. doi:10.1002/atr.1401.
- Sayarshad, H. R., and J. Y. J. Chow. 2017. “Non-Myopic Relocation of Idle Mobility-on-Demand Vehicles as a Dynamic Location-Allocation-Queueing Problem.” Transportation Research Part E: Logistics and Transportation Review 106: 60–77. doi:10.1016/j.tre.2017.08.003.
- Spieser, K., S. Samaranayake, W. Gruel, and E. Frazzoli. 2016. “Shared-Vehicle Mobility-on-Demand Systems: A Fleet Operator’s Guide to Rebalancing Empty Vehicles.”
- Tong, Y., Y. Chen, Z. Zhou, L. Chen, J. Wang, Q. Yang, J. Ye, and W. Lv. 2017. “The Simpler The Better.” Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining - KDD ’17, pp. 1653–1662. doi:10.1145/3097983.3098018.