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Integrating Semantic Zoning Information with the Prediction of Road Link Speed Based on Taxi GPS Data
by
Bing, He
, Jinxing, Hu
, Zhifeng, Xu
, Zhanwu, Ma
, Yangjie, Xu
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Clustering
/ Computational linguistics
/ Data mining
/ Datasets
/ Dynamic characteristics
/ Forecasts and trends
/ Global Positioning System
/ Global positioning systems
/ GPS
/ Graph representations
/ Language processing
/ Links
/ Machine learning
/ Methods
/ Natural language interfaces
/ Neural networks
/ Performance enhancement
/ Semantic analysis
/ Semantics
/ Sensors
/ Taxicabs
/ Traffic congestion
/ Traffic flow
/ Traffic speed
/ Travel
/ Vehicles
/ Zoning
2020
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Integrating Semantic Zoning Information with the Prediction of Road Link Speed Based on Taxi GPS Data
by
Bing, He
, Jinxing, Hu
, Zhifeng, Xu
, Zhanwu, Ma
, Yangjie, Xu
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Clustering
/ Computational linguistics
/ Data mining
/ Datasets
/ Dynamic characteristics
/ Forecasts and trends
/ Global Positioning System
/ Global positioning systems
/ GPS
/ Graph representations
/ Language processing
/ Links
/ Machine learning
/ Methods
/ Natural language interfaces
/ Neural networks
/ Performance enhancement
/ Semantic analysis
/ Semantics
/ Sensors
/ Taxicabs
/ Traffic congestion
/ Traffic flow
/ Traffic speed
/ Travel
/ Vehicles
/ Zoning
2020
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Integrating Semantic Zoning Information with the Prediction of Road Link Speed Based on Taxi GPS Data
by
Bing, He
, Jinxing, Hu
, Zhifeng, Xu
, Zhanwu, Ma
, Yangjie, Xu
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Clustering
/ Computational linguistics
/ Data mining
/ Datasets
/ Dynamic characteristics
/ Forecasts and trends
/ Global Positioning System
/ Global positioning systems
/ GPS
/ Graph representations
/ Language processing
/ Links
/ Machine learning
/ Methods
/ Natural language interfaces
/ Neural networks
/ Performance enhancement
/ Semantic analysis
/ Semantics
/ Sensors
/ Taxicabs
/ Traffic congestion
/ Traffic flow
/ Traffic speed
/ Travel
/ Vehicles
/ Zoning
2020
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Integrating Semantic Zoning Information with the Prediction of Road Link Speed Based on Taxi GPS Data
Journal Article
Integrating Semantic Zoning Information with the Prediction of Road Link Speed Based on Taxi GPS Data
2020
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Overview
Road link speed is one of the important indicators for traffic states. In order to incorporate the spatiotemporal dynamics and correlation characteristics of road links into speed prediction, this paper proposes a method based on LDA and GCN. First, we construct a trajectory dataset from map-matched GPS location data of taxis. Then, we use the LDA algorithm to extract the semantic function vectors of urban zones and quantify the spatial dynamic characteristics of road links based on taxi trajectories. Finally, we add semantic function vectors to the dataset and train a graph convolutional network to learn the spatial and temporal dependencies of road links. The learned model is used to predict the future speed of road links. The proposed method is compared with six baseline models on the same dataset generated by GPS equipped on taxis in Shenzhen, China, and the results show that our method has better prediction performance when semantic zoning information is added. Both composite and single-valued semantic zoning information can improve the performance of graph convolutional networks by 6.46% and 8.35%, respectively, while the baseline machine learning models work only for single-valued semantic zoning information on the experimental dataset.
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