Conference proceeding
TrafficGAN: Off-Deployment Traffic Estimation with Traffic Generative Adversarial Networks
2019 19TH IEEE INTERNATIONAL CONFERENCE ON DATA MINING (ICDM 2019), Vol.2019-, pp.1474-1479
IEEE International Conference on Data Mining
01/01/2019
DOI: 10.1109/ICDM.2019.00193
Abstract
The rapid progress of urbanization has expedited the process of urban planning, e.g., new residential, commercial areas, which in turn boosts the local travel demand. We propose a novel "off-deployment traffic estimation problem", namely, to foresee the traffic condition changes of a region prior to the deployment of a construction plan. This problem is important to city planners to evaluate and develop urban deployment plans. However, this task is challenging. Traditional traffic estimation approaches lack the ability to solve this problem, since no data about the impact can be collected before the deployment and old data fails to capture the traffic pattern changes. In this paper, we define the off-deployment traffic estimation problem as a traffic generation problem, and develop a novel deep generative model TrafficGAN that captures the shared patterns across spatial regions of how traffic conditions evolve according to travel demand changes and underlying road network structures. In particular, TrafficGAN captures the road network structures through a dynamic filter in the dynamic convolutional layer. We evaluate our TrafficGAN using a large-scale traffic data collected from Shenzhen, China. Results show that TrafficGAN can more accurately estimate the traffic conditions compared with all baselines.
Details
- Title: Subtitle
- TrafficGAN: Off-Deployment Traffic Estimation with Traffic Generative Adversarial Networks
- Creators
- Yingxue Zhang - Worcester Polytechnic InstituteYanhua Li - Worcester Polytechnic InstituteXun Zhou - University of IowaXiangnan Kong - Worcester Polytechnic InstituteJun Luo - Lenovo
- Contributors
- Jianyong Wang (Editor)Kyuseok Shim (Editor)Xindong Wu (Editor)
- Resource Type
- Conference proceeding
- Publication Details
- 2019 19TH IEEE INTERNATIONAL CONFERENCE ON DATA MINING (ICDM 2019), Vol.2019-, pp.1474-1479
- Publisher
- IEEE
- Series
- IEEE International Conference on Data Mining
- DOI
- 10.1109/ICDM.2019.00193
- ISSN
- 1550-4786
- eISSN
- 2374-8486
- Number of pages
- 6
- Grant note
- DiDi Chuxing Inc. CNS-1657350; CMMI-1831140; IIS-1566386; IIS-1718310 / NSF; National Science Foundation (NSF)
- Language
- English
- Date published
- 01/01/2019
- Academic Unit
- Business Analytics
- Record Identifier
- 9984380477102771
Metrics
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