Litcius/Paper detail

Multitask Learning and GCN-Based Taxi Demand Prediction for a Traffic Road Network

Zhe Chen, Bin Zhao, Yuehan Wang, Zongtao Duan, Xin Zhao

2020Sensors58 citationsDOIOpen Access PDF

Abstract

The accurate forecasting of urban taxi demands, which is a hot topic in intelligent transportation research, is challenging due to the complicated spatial-temporal dependencies, the dynamic nature, and the uncertainty of traffic. To make full use of the global and local correlations between traffic flows on road sections, this paper presents a deep learning model based on a graph convolutional network, long short-term memory (LSTM), and multitask learning. First, an undirected graph model was formed by considering the spatial pattern distribution of taxi trips on road networks. Then, LSTMs were used to extract the temporal features of traffic flows. Finally, the model was trained using a multitask learning strategy to improve the model's generalizability. In the experiments, the efficiency and accuracy were verified with real-world taxi trajectory data. The experimental results showed that the model could effectively forecast the short-term taxi demands on the traffic network level and outperform state-of-the-art traffic prediction methods.

Topics & Concepts

Computer scienceTransport engineeringDeep learningRoad trafficArtificial intelligenceMachine learningEngineeringTraffic Prediction and Management TechniquesTransportation Planning and OptimizationHuman Mobility and Location-Based Analysis