Semi-Supervised Hierarchical Recurrent Graph Neural Network for City-Wide Parking Availability Prediction
November 24, 2019 ยท Declared Dead ยท ๐ AAAI Conference on Artificial Intelligence
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Authors
Weijia Zhang, Hao Liu, Yanchi Liu, Jingbo Zhou, Hui Xiong
arXiv ID
1911.10516
Category
cs.LG: Machine Learning
Cross-listed
eess.SP,
stat.ML
Citations
110
Venue
AAAI Conference on Artificial Intelligence
Last Checked
4 months ago
Abstract
The ability to predict city-wide parking availability is crucial for the successful development of Parking Guidance and Information (PGI) systems. Indeed, the effective prediction of city-wide parking availability can improve parking efficiency, help urban planning, and ultimately alleviate city congestion. However, it is a non-trivial task for predicting citywide parking availability because of three major challenges: 1) the non-Euclidean spatial autocorrelation among parking lots, 2) the dynamic temporal autocorrelation inside of and between parking lots, and 3) the scarcity of information about real-time parking availability obtained from real-time sensors (e.g., camera, ultrasonic sensor, and GPS). To this end, we propose Semi-supervised Hierarchical Recurrent Graph Neural Network (SHARE) for predicting city-wide parking availability. Specifically, we first propose a hierarchical graph convolution structure to model non-Euclidean spatial autocorrelation among parking lots. Along this line, a contextual graph convolution block and a soft clustering graph convolution block are respectively proposed to capture local and global spatial dependencies between parking lots. Additionally, we adopt a recurrent neural network to incorporate dynamic temporal dependencies of parking lots. Moreover, we propose a parking availability approximation module to estimate missing real-time parking availabilities from both spatial and temporal domain. Finally, experiments on two real-world datasets demonstrate the prediction performance of SHARE outperforms seven state-of-the-art baselines.
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