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GNN-based Passenger Request Prediction (2301.02515v2)

Published 6 Jan 2023 in cs.LG and cs.AI

Abstract: Passenger request prediction is essential for operations planning, control, and management in ride-sharing platforms. While the demand prediction problem has been studied extensively, the Origin-Destination (OD) flow prediction of passengers has received less attention from the research community. This paper develops a Graph Neural Network framework along with the Attention Mechanism to predict the OD flow of passengers. The proposed framework exploits various linear and non-linear dependencies that arise among requests originating from different locations and captures the repetition pattern and the contextual data of that place. Moreover, the optimal size of the grid cell that covers the road network and preserves the complexity and accuracy of the model is determined. Extensive simulations are conducted to examine the characteristics of our proposed approach and its various components. The results show the superior performance of our proposed model compared to the existing baselines.

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References (22)
  1. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleEnvironmental benefits of taxi ride sharing in Beijing Environmental benefits of taxi ride sharing in beijing.\BBCQ \APACjournalVolNumPagesEnergy174503-508. \PrintBackRefs\CurrentBib
  2. \APACrefYearMonthDay2011. \BBOQ\APACrefatitleFriendship and mobility: user movement in location-based social networks Friendship and mobility: user movement in location-based social networks.\BBCQ \BIn \APACrefbtitleProceedings of the 17th ACM SIGKDD international conference on Knowledge discovery and data mining Proceedings of the 17th acm sigkdd international conference on knowledge discovery and data mining (\BPGS 1082–1090). \PrintBackRefs\CurrentBib
  3. \APACrefYearMonthDay2018June. \BBOQ\APACrefatitleItssafe: An Intelligent Transportation System for Improving Safety and Traffic Efficiency Itssafe: An intelligent transportation system for improving safety and traffic efficiency.\BBCQ \BIn \APACrefbtitle2018 IEEE 87th Vehicular Technology Conference (VTC Spring) 2018 ieee 87th vehicular technology conference (vtc spring) (\BPG 1-7). \PrintBackRefs\CurrentBib
  4. \APACinsertmetastardiffey_britishjournal:2011{APACrefauthors}Diffey, B\BPBIL.  \APACrefYearMonthDay2011. \BBOQ\APACrefatitleAn overview analysis of the time people spend outdoors An overview analysis of the time people spend outdoors.\BBCQ \APACjournalVolNumPagesBritish Journal of Dermatology1644848–854. \PrintBackRefs\CurrentBib
  5. \APACrefYearMonthDay2016. \BBOQ\APACrefatitleUrban navigation beyond shortest route: The case of safe paths Urban navigation beyond shortest route: The case of safe paths.\BBCQ \APACjournalVolNumPagesInformation Systems57160-171. \PrintBackRefs\CurrentBib
  6. \APACrefYearMonthDay2022Aug. \BBOQ\APACrefatitleBM-DDPG: An Integrated Dispatching Framework for Ride-Hailing Systems Bm-ddpg: An integrated dispatching framework for ride-hailing systems.\BBCQ \APACjournalVolNumPagesIEEE Transactions on Intelligent Transportation Systems23811666-11676. \PrintBackRefs\CurrentBib
  7. \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRoute Recommendations for Idle Taxi Drivers: Find Me the Shortest Route to a Customer! Route recommendations for idle taxi drivers: Find me the shortest route to a customer!\BBCQ \BIn \APACrefbtitleProceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining Proceedings of the 24th acm sigkdd international conference on knowledge discovery & data mining (\BPG 1425–1434). \APACaddressPublisherNew York, NY, USAAssociation for Computing Machinery. \PrintBackRefs\CurrentBib
  8. \APACrefYearMonthDay2017. \BBOQ\APACrefatitleInductive representation learning on large graphs Inductive representation learning on large graphs.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30. \PrintBackRefs\CurrentBib
  9. \APACrefYearMonthDay2004. \BBOQ\APACrefatitleA real-time short-term traffic flow adaptive forecasting method based on ARIMA model A real-time short-term traffic flow adaptive forecasting method based on arima model.\BBCQ \APACjournalVolNumPagesJournal of system simulation1671530–1535. \PrintBackRefs\CurrentBib
  10. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Federated Learning-Based Framework for Ride-sourcing Traffic Demand Prediction A federated learning-based framework for ride-sourcing traffic demand prediction.\BBCQ \APACjournalVolNumPagesIEEE Transactions on Vehicular Technology1-15. {APACrefDOI} 10.1109/TVT.2023.3287221 \PrintBackRefs\CurrentBib
  11. \APACrefYearMonthDay2020. \BBOQ\APACrefatitleUrban ride-hailing demand prediction with multiple spatio-temporal information fusion network Urban ride-hailing demand prediction with multiple spatio-temporal information fusion network.\BBCQ \APACjournalVolNumPagesTransportation Research Part C: Emerging Technologies117102665. \PrintBackRefs\CurrentBib
  12. \APACrefYearMonthDay2021. \BBOQ\APACrefatitlePredicting origin-destination ride-sourcing demand with a spatio-temporal encoder-decoder residual multi-graph convolutional network Predicting origin-destination ride-sourcing demand with a spatio-temporal encoder-decoder residual multi-graph convolutional network.\BBCQ \APACjournalVolNumPagesTransportation Research Part C: Emerging Technologies122102858. \PrintBackRefs\CurrentBib
  13. \APACrefYearMonthDay2013June. \BBOQ\APACrefatitleShort-Term Traffic Flow Forecasting: An Experimental Comparison of Time-Series Analysis and Supervised Learning Short-term traffic flow forecasting: An experimental comparison of time-series analysis and supervised learning.\BBCQ \APACjournalVolNumPagesIEEE Transactions on Intelligent Transportation Systems142871-882. \PrintBackRefs\CurrentBib
  14. \APACinsertmetastarArticle:workhours{APACrefauthors}Ortiz-Ospina, E.  \APACrefYearMonthDay2020. \APACrefbtitleHow do people across the world spend their time and what does this tell us about living conditions? How do people across the world spend their time and what does this tell us about living conditions? \APAChowpublishedhttps://ourworldindata.org/time-use-living-conditions. \APACrefnoteAccessed: 2022-10-13 \PrintBackRefs\CurrentBib
  15. \APACinsertmetastarArticle:UberPollution_2020{APACrefauthors}Petit, Y\BPBIL.  \APACrefYearMonthDay2020. \APACrefbtitleUber pollutes more than the cars it replaces–US scientists. Uber pollutes more than the cars it replaces–us scientists. \APAChowpublishedhttps://www.transportenvironment.org/discover/uber-pollutes-more-cars-it-replaces-us-scientists/. \APACrefnoteAccessed: 2022-02-28 \PrintBackRefs\CurrentBib
  16. \APACinsertmetastarSchaller:ElsevierTransport_2021{APACrefauthors}Schaller, B.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleCan sharing a ride make for less traffic? Evidence from Uber and Lyft and implications for cities Can sharing a ride make for less traffic? evidence from uber and lyft and implications for cities.\BBCQ \APACjournalVolNumPagesTransport Policy1021-10. \PrintBackRefs\CurrentBib
  17. \APACrefYearMonthDay2018. \BBOQ\APACrefatitleStructured sequence modeling with graph convolutional recurrent networks Structured sequence modeling with graph convolutional recurrent networks.\BBCQ \BIn \APACrefbtitleNeural Information Processing: 25th International Conference, ICONIP 2018, Siem Reap, Cambodia, December 13-16, 2018, Proceedings, Part I 25 Neural information processing: 25th international conference, iconip 2018, siem reap, cambodia, december 13-16, 2018, proceedings, part i 25 (\BPGS 362–373). \PrintBackRefs\CurrentBib
  18. \APACrefYearMonthDay2018July. \BBOQ\APACrefatitleA Novel Personalized Dynamic Route Recommendation Approach Based on Pearson Similarity Coefficient in Cooperative Vehicle-Infrastructure Systems A novel personalized dynamic route recommendation approach based on pearson similarity coefficient in cooperative vehicle-infrastructure systems.\BBCQ \BIn \APACrefbtitle2018 IEEE 8th Annual International Conference on CYBER Technology in Automation, Control, and Intelligent Systems (CYBER) 2018 ieee 8th annual international conference on cyber technology in automation, control, and intelligent systems (cyber) (\BPG 1270-1275). \PrintBackRefs\CurrentBib
  19. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA Baselined Gated Attention Recurrent Network for Request Prediction in Ridesharing A baselined gated attention recurrent network for request prediction in ridesharing.\BBCQ \APACjournalVolNumPagesIEEE Access1086423–86434. \PrintBackRefs\CurrentBib
  20. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOrigin-Destination Matrix Prediction via Graph Convolution: A New Perspective of Passenger Demand Modeling Origin-destination matrix prediction via graph convolution: A new perspective of passenger demand modeling.\BBCQ \BIn \APACrefbtitleProceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPG 1227–1235). \APACaddressPublisherNew York, NY, USAAssociation for Computing Machinery. \PrintBackRefs\CurrentBib
  21. \APACrefYearMonthDay2021\BCnt1. \BBOQ\APACrefatitleGallat: A Spatiotemporal Graph Attention Network for Passenger Demand Prediction Gallat: A spatiotemporal graph attention network for passenger demand prediction.\BBCQ \BIn \APACrefbtitle2021 IEEE 37th International Conference on Data Engineering (ICDE) 2021 ieee 37th international conference on data engineering (icde) (\BPG 2129-2134). \PrintBackRefs\CurrentBib
  22. \APACrefYearMonthDay2021\BCnt2nov. \BBOQ\APACrefatitlePassenger Mobility Prediction via Representation Learning for Dynamic Directed and Weighted Graphs Passenger mobility prediction via representation learning for dynamic directed and weighted graphs.\BBCQ \APACjournalVolNumPagesACM Trans. Intell. Syst. Technol.131. \PrintBackRefs\CurrentBib
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Authors (2)
  1. Aqsa Ashraf Makhdomi (3 papers)
  2. Iqra Altaf Gillani (10 papers)
Citations (6)

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