Fairness-Enhancing Vehicle Rebalancing in the Ride-hailing System (2401.00093v1)
Abstract: The rapid growth of the ride-hailing industry has revolutionized urban transportation worldwide. Despite its benefits, equity concerns arise as underserved communities face limited accessibility to affordable ride-hailing services. A key issue in this context is the vehicle rebalancing problem, where idle vehicles are moved to areas with anticipated demand. Without equitable approaches in demand forecasting and rebalancing strategies, these practices can further deepen existing inequities. In the realm of ride-hailing, three main facets of fairness are recognized: algorithmic fairness, fairness to drivers, and fairness to riders. This paper focuses on enhancing both algorithmic and rider fairness through a novel vehicle rebalancing method. We introduce an approach that combines a Socio-Aware Spatial-Temporal Graph Convolutional Network (SA-STGCN) for refined demand prediction and a fairness-integrated Matching-Integrated Vehicle Rebalancing (MIVR) model for subsequent vehicle rebalancing. Our methodology is designed to reduce prediction discrepancies and ensure equitable service provision across diverse regions. The effectiveness of our system is evaluated using simulations based on real-world ride-hailing data. The results suggest that our proposed method enhances both accuracy and fairness in forecasting ride-hailing demand, ultimately resulting in more equitable vehicle rebalancing in subsequent operations. Specifically, the algorithm developed in this study effectively reduces the standard deviation and average customer wait times by 6.48% and 0.49%, respectively. This achievement signifies a beneficial outcome for ride-hailing platforms, striking a balance between operational efficiency and fairness.
- Impacts of transportation network companies on urban mobility, Nature Sustainability 4 (2021) 494–500.
- Shared-vehicle mobility-on-demand systems: a fleet operator’s guide to rebalancing empty vehicles, in: Transportation Research Board 95th Annual Meeting, 16-5987, Transportation Research Board.
- Vehicle rebalancing for mobility-on-demand systems with ride-sharing, in: 2018 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), IEEE, pp. 4539–4546.
- Data-driven distributionally robust vehicle balancing using dynamic region partitions, in: Proceedings of the 8th International Conference on Cyber-Physical Systems - ICCPS ’17, ACM Press, 2017, p. 261–271.
- Rebalancing shared mobility-on-demand systems: A reinforcement learning approach, in: 2017 IEEE 20th International Conference on Intelligent Transportation Systems (ITSC), IEEE, pp. 220–225.
- Robust matching-integrated vehicle rebalancing in ride-hailing system with uncertain demand, Transportation Research Part B: Methodological 150 (2021) 161–189.
- Data-driven vehicle rebalancing with predictive prescriptions in the ride-hailing system, IEEE Open Journal of Intelligent Transportation Systems 3 (2022) 251–266.
- Seasonal autoregressive integrated moving average and support vector machine models: prediction of short-term traffic flow on freeways, Transportation Research Record 2215 (2011) 85–92.
- Prediction of urban human mobility using large-scale taxi traces and its applications, Frontiers of Computer Science 6 (2012) 111–121.
- Public bicycle traffic flow prediction based on a hybrid model, Applied Mathematics & Information Sciences 7 (2013) 667–674.
- Traffic prediction in a bike-sharing system, in: Proceedings of the 23rd SIGSPATIAL International Conference on Advances in Geographic Information Systems, pp. 1–10.
- Short-term forecasting of passenger demand under on-demand ride services: A spatio-temporal deep learning approach, Transportation Research Part C: Emerging Technologies 85 (2017) 591–608.
- G. Guo, T. Zhang, A residual spatio-temporal architecture for travel demand forecasting, Transportation Research Part C: Emerging Technologies 115 (2020) 102639.
- A multi-task memory network with knowledge adaptation for multimodal demand forecasting, Transportation Research Part C: Emerging Technologies 131 (2021) 103352.
- A. Yan, B. Howe, Fairness-aware demand prediction for new mobility, Proceedings of the AAAI Conference on Artificial Intelligence 34 (2020) 1079–1087.
- A. Yan, B. Howe, Equitensors: Learning fair integrations of heterogeneous urban data, Association for Computing Machinery, 2021, pp. 2338–2347.
- Two-sided fairness for repeated matchings in two-sided markets: A case study of a ride-hailing platform, Association for Computing Machinery, 2019, pp. 3082–3092.
- E. Bokányi, A. Hannák, Understanding inequalities in ride-hailing services through simulations, Scientific Reports 10 (2020).
- Optimizing long-term efficiency and fairness in ride-hailing via joint order dispatching and driver repositioning, Association for Computing Machinery, 2022, pp. 3950–3960.
- Balancing the tradeoff between profit and fairness in rideshare platforms during high-demand hours, in: Proceedings of the AAAI/ACM Conference on AI, Ethics, and Society, AIES ’20, Association for Computing Machinery, New York, NY, USA, 2020, p. 131.
- Say no to price discrimination: Decentralized and automated incentives for price auditing in ride-hailing services, IEEE Transactions on Mobile Computing 21 (2022) 663–680.
- Z. Ke, S. Qian, Leveraging ride-hailing services for social good: Fleet optimal routing and system optimal pricing, Transportation Research Part C: Emerging Technologies 155 (2023).
- The optimization model of ride-sharing route for ride hailing considering both system optimization and user fairness, Sustainability (Switzerland) 13 (2021) 1–17.
- Data-driven methods for balancing fairness and efficiency in ride-pooling (2021).
- Spatio-Temporal Graph Convolutional Networks: A Deep Learning Framework for Traffic Forecasting, in: Proceedings of the Twenty-Seventh International Joint Conference on Artificial Intelligence, pp. 3634–3640. ArXiv:1709.04875 [cs, stat].
- H. Wang, H. Yang, Ridesourcing systems: A framework and review, Transportation Research Part B: Methodological 129 (2019) 122–155.
- Dissolving the segmentation of a shared mobility market: A framework and four market structure designs, Transportation Research Part C: Emerging Technologies 157 (2023) 104397.
- Understanding multi-homing and switching by platform drivers, Transportation Research Part C: Emerging Technologies 154 (2023) 104233.
- On-demand high-capacity ride-sharing via dynamic trip-vehicle assignment, Proceedings of the National Academy of Sciences 114 (2017) 462.
- Surge pricing solves the wild goose chase, in: Proceedings of the 2017 ACM Conference on Economics and Computation, EC ’17, Association for Computing Machinery, New York, NY, USA, 2017, p. 241–242.
- G. A. Godfrey, W. B. Powell, An adaptive dynamic programming algorithm for dynamic fleet management, i: Single period travel times, Transportation Science 36 (2002a) 21–39.
- G. A. Godfrey, W. B. Powell, An adaptive dynamic programming algorithm for dynamic fleet management, ii: Multiperiod travel times, Transportation Science 36 (2002b) 40–54.
- Real-world ride-hailing vehicle repositioning using deep reinforcement learning, arXiv:2103.04555 [cs] (2021). ArXiv: 2103.04555.
- Empty-car routing in ridesharing systems, Operations Research 67 (2019) 1437–1452.
- Analysis and control of autonomous mobility-on-demand systems: A review, arXiv:2106.14827 [cs, eess] (2021). ArXiv: 2106.14827.
- Robotic load balancing for mobility-on-demand systems, The International Journal of Robotics Research 31 (2012) 839–854.
- R. Zhang, M. Pavone, Control of robotic mobility-on-demand systems: a queueing-theoretical perspective, arXiv:1404.4391 [cs] (2014). ArXiv: 1404.4391.
- Data-driven model predictive control of autonomous mobility-on-demand systems, arXiv:1709.07032 [cs, stat] (2017). ArXiv: 1709.07032.
- Model predictive control of ride-sharing autonomous mobility-on-demand systems, in: 2019 International Conference on Robotics and Automation (ICRA), IEEE, 2019, p. 6665–6671.
- Supervised weighting-online learning algorithm for short-term traffic flow prediction, IEEE Transactions on Intelligent Transportation Systems 14 (2013) 1700–1707.
- Short-Term Traffic Flow Forecasting: An Experimental Comparison of Time-Series Analysis and Supervised Learning, IEEE Transactions on Intelligent Transportation Systems 14 (2013) 871–882. Conference Name: IEEE Transactions on Intelligent Transportation Systems.
- Short-term traffic forecasting: Where we are and where we’re going, Transportation Research Part C: Emerging Technologies 43 (2014) 3–19.
- Dnn-based prediction model for spatio-temporal data, in: Proceedings of the 24th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems, ACM, Burlingame California, 2016, p. 1–4.
- Deep spatio-temporal residual networks for citywide crowd flows prediction, Proceedings of the AAAI Conference on Artificial Intelligence 31 (2017).
- Revisiting spatial-temporal similarity: A deep learning framework for traffic prediction, Proceedings of the AAAI Conference on Artificial Intelligence 33 (2019) 5668–5675.
- Deep multi-view spatial-temporal network for taxi demand prediction, Proceedings of the AAAI Conference on Artificial Intelligence 32 (2018).
- W. Jiang, J. Luo, Graph neural network for traffic forecasting: A survey, Expert Systems with Applications 207 (2022) 117921.
- J. Atwood, D. Towsley, Diffusion-convolutional neural networks, in: Advances in Neural Information Processing Systems, volume 29, Curran Associates, Inc., 2016.
- Neural message passing for quantum chemistry, in: Proceedings of the 34th International Conference on Machine Learning, PMLR, 2017, p. 1263–1272.
- Inductive representation learning on large graphs, in: Advances in Neural Information Processing Systems, volume 30, Curran Associates, Inc., 2017.
- Graph attention networks (2018). ArXiv:1710.10903 [cs, stat].
- Diffusion convolutional recurrent neural network: Data-driven traffic forecasting (2018). MAG ID: 2963358464.
- Exploring equity: How equity norms have been applied implicitly and explicitly in transportation research and practice, Transportation Research Interdisciplinary Perspectives 9 (2021) 100332.
- R. Binns, Fairness in Machine Learning: Lessons from Political Philosophy, in: Proceedings of the 1st Conference on Fairness, Accountability and Transparency, PMLR, 2018, pp. 149–159. ISSN: 2640-3498.
- D. Pessach, E. Shmueli, A Review on Fairness in Machine Learning, ACM Computing Surveys 55 (2022) 51:1–51:44.
- T. A. Litman, Evaluating Transportation Equity (2023).
- T. S. Bills, J. L. Walker, Looking beyond the mean for equity analysis: Examining distributional impacts of transportation improvements, Transport Policy 54 (2017) 61–69.
- Economic growth, transport accessibility and regional equity impacts of high-speed railways in Italy: ten years ex post evaluation and future perspectives, Transportation Research Part A: Policy and Practice 139 (2020) 412–428.
- Equality of opportunity in travel behavior prediction with deep neural networks and discrete choice models, Transportation Research Part C: Emerging Technologies 132 (2021) 103410.
- SCRAM: A Sharing Considered Route Assignment Mechanism for Fair Taxi Route Recommendations, in: Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD ’15, Association for Computing Machinery, New York, NY, USA, 2015, pp. 955–964.
- Putting fairness principles into practice: Challenges, metrics, and improvements (2019). ArXiv:1901.04562 [cs, stat].
- An introduction to the theory of graph spectra, (No Title) (2009).
- The laplacian spectrum of a graph, SIAM Journal on matrix analysis and applications 11 (1990) 218–238.
- F. L. Hitchcock, The expression of a tensor or a polyadic as a sum of products, Journal of Mathematics and Physics 6 (1927) 164–189.
- R. A. Harshman, et al., Foundations of the parafac procedure: Models and conditions for an” explanatory” multimodal factor analysis (1970).
- Low-rank hankel tensor completion for traffic speed estimation, IEEE Transactions on Intelligent Transportation Systems 24 (2023) 4862–4871.
- A Unified Approach to Quantifying Algorithmic Unfairness: Measuring Individual &Group Unfairness via Inequality Indices, in: Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, ACM, London United Kingdom, 2018, pp. 2239–2248.