Traffic Flow Forecasting Using a Spatio-Temporal Bayesian Network Predictor
December 24, 2017 Β· Declared Dead Β· π International Conference on Artificial Neural Networks
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Authors
Shiliang Sun, Changshui Zhang, Yi Zhang
arXiv ID
1712.08883
Category
cs.AI: Artificial Intelligence
Cross-listed
stat.AP
Citations
80
Venue
International Conference on Artificial Neural Networks
Last Checked
3 months ago
Abstract
A novel predictor for traffic flow forecasting, namely spatio-temporal Bayesian network predictor, is proposed. Unlike existing methods, our approach incorporates all the spatial and temporal information available in a transportation network to carry our traffic flow forecasting of the current site. The Pearson correlation coefficient is adopted to rank the input variables (traffic flows) for prediction, and the best-first strategy is employed to select a subset as the cause nodes of a Bayesian network. Given the derived cause nodes and the corresponding effect node in the spatio-temporal Bayesian network, a Gaussian Mixture Model is applied to describe the statistical relationship between the input and output. Finally, traffic flow forecasting is performed under the criterion of Minimum Mean Square Error (M.M.S.E.). Experimental results with the urban vehicular flow data of Beijing demonstrate the effectiveness of our presented spatio-temporal Bayesian network predictor.
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