Follow
Qingyi Wang
Qingyi Wang
Verified email at mit.edu
Title
Cited by
Cited by
Year
Deep neural networks for choice analysis: Extracting complete economic information for interpretation
S Wang, Q Wang, J Zhao
Transportation Research Part C: Emerging Technologies 118, 102701, 2020
832020
Multitask learning deep neural networks to combine revealed and stated preference data
S Wang, Q Wang, J Zhao
Journal of choice modelling 37, 100236, 2020
322020
Deep neural networks for choice analysis: A statistical learning theory perspective
S Wang, Q Wang, N Bailey, J Zhao
Transportation Research Part B: Methodological 148, 60-81, 2021
282021
Data-driven vehicle rebalancing with predictive prescriptions in the ride-hailing system
X Guo, Q Wang, J Zhao
IEEE Open Journal of Intelligent Transportation Systems 3, 251-266, 2022
182022
Impacts of subjective evaluations and inertia from existing travel modes on adoption of autonomous mobility-on-demand
B Mo, QY Wang, J Moody, Y Shen, J Zhao
Transportation Research Part C: Emerging Technologies 130, 103281, 2021
172021
Uncertainty quantification of spatiotemporal travel demand with probabilistic graph neural networks
Q Wang, S Wang, D Zhuang, H Koutsopoulos, J Zhao
IEEE Transactions on Intelligent Transportation Systems, 2024
102024
Fairness-enhancing deep learning for ride-hailing demand prediction
Y Zheng, Q Wang, D Zhuang, S Wang, J Zhao
IEEE Open Journal of Intelligent Transportation Systems, 2023
42023
Predicting drivers’ route trajectories in last-mile delivery using a pair-wise attention-based pointer neural network
B Mo, Q Wang, X Guo, M Winkenbach, J Zhao
Transportation Research Part E: Logistics and Transportation Review 175, 103168, 2023
42023
Amazon last-mile delivery trajectory prediction using hierarchical TSP with customized cost matrix
X Guo, B Mo, Q Wang
arXiv preprint arXiv:2302.02102, 2023
42023
Deep hybrid model with satellite imagery: How to combine demand modeling and computer vision for travel behavior analysis?
Q Wang, S Wang, Y Zheng, H Lin, X Zhang, J Zhao, J Walker
Transportation Research Part B: Methodological 179, 102869, 2024
2*2024
Machine learning approaches reveal highly heterogeneous air quality co-benefits of the energy transition
D Zhang, Q Wang, S Song, S Chen, M Li, L Shen, S Zheng, B Cai, ...
Iscience 26 (9), 2023
2023
Estimating air quality co-benefits of energy transition using machine learning
D Zhang, Q Wang, S Song, S Chen, M Li, L Shen, S Zheng, B Cai, ...
arXiv preprint arXiv:2105.14318, 2021
2021
The system can't perform the operation now. Try again later.
Articles 1–12