中文版 | English
Title

Forecasting Regional Multimodal Transportation Demand with Graph Neural Networks: An Open Dataset

Author
Corresponding AuthorJiang,Renhe; Song,Xuan
DOI
Publication Years
2022
ISBN
978-1-6654-6881-7
Source Title
Volume
2022-October
Pages
3263-3268
Conference Date
8-12 Oct. 2022
Conference Place
Macau, China
Abstract
Nowadays, with the rapid development of the Internet of Things technologies, big spatio-temporal data are able to be obtained from everywhere in our society. Based on such kind of data, transportation demand prediction has drawn increasing attention from the industry for its ubiquitous real-life applications such as traffic scheduling, crowd management and public safety. In this study, we first generate a multimodal transportation demand dataset by using the bike and taxi trip data from New York City. To model the regional transportation demands in non-Euclidean space, we employ Graph Neural Networks including STGCN, DCRNN, and Graph WaveNet and further implement several generic performance-boosting strategies by respectively utilizing multi-source (bike-inflow, bike-outflow, taxi-inflow, taxi-outflow), multi-graph (adjacency matrix and origin-destination matrix), and meta-information (dayofweek, hourofday, isholiday). The open dataset and the deep models implemented with PyTorch are now available on https://github.com/Evens1sen/Deep-NYC-Taxi-Bike.
Keywords
SUSTech Authorship
First ; Corresponding
Language
English
URL[Source Record]
Indexed By
EI Accession Number
20224613131014
EI Keywords
Accident prevention ; Graph neural networks ; HTTP ; Matrix algebra ; Motor transportation ; Taxicabs ; Transportation routes
ESI Classification Code
Automobiles:662.1 ; Artificial Intelligence:723.4 ; Management:912.2 ; Accidents and Accident Prevention:914.1 ; Algebra:921.1
Scopus EID
2-s2.0-85141872973
Data Source
Scopus
PDF urlhttps://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=9922512
Citation statistics
Cited Times [WOS]:1
Document TypeConference paper
Identifierhttp://kc.sustech.edu.cn/handle/2SGJ60CL/411859
DepartmentDepartment of Computer Science and Engineering
Affiliation
1.Southern University of Science and Technology,Department of Computer Science and Engineering,China
2.Center for Spatial Information Science,the University of Tokyo,Japan
3.Information Technology Center,The University of Tokyo,Japan
First Author AffilicationDepartment of Computer Science and Engineering
Corresponding Author AffilicationDepartment of Computer Science and Engineering
First Author's First AffilicationDepartment of Computer Science and Engineering
Recommended Citation
GB/T 7714
Ma,Haoyuan,Zhou,Mintao,Ouyang,Xiaodong,et al. Forecasting Regional Multimodal Transportation Demand with Graph Neural Networks: An Open Dataset[C],2022:3263-3268.
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