A Spatiotemporal Multi-View-Based Learning Method for Short-Term Traffic Forecasting
Abstract
:1. Introduction
2. Methodology
2.1. Construction of Space-Time Cuboid
2.2. ST-KNN Model
2.3. Multi-View-Based Learning
Algorithm 1: Training of MVL-STKNN |
Input: Near spatiotemporal cuboids: ; |
Periodic spatiotemporal cuboid: ; |
Trend spatiotemporal cuboid: ; |
Lengths of closeness, period, trend: ,,; |
Number of candidate neighbors: ; |
Parameter of Gaussian function: . |
Output: MVL-STKNN model . |
// construct training instances |
1 |
2 For all time interval in the training spatiotemporal cuboids |
3 // |
4 = ST-KNN() // |
5 = ST-KNN() // |
6 = ST-KNN() // |
7 Put a training instance into |
8 End for |
// Training the model |
9 // Neural network training |
10 Output the learned MVL-STKNN model |
Algorithm 2: Prediction of MVL-STKNN |
Input: Near spatiotemporal cuboids: ; |
Periodic spatiotemporal cuboid: ; |
Trend spatiotemporal cuboid: ; |
Lengths of closeness, period, trend: ,,; |
Number of candidate neighbors: ; |
Parameter of Gaussian function: . |
Output: Set of test sample predictions: . |
1 For all time interval in the test spatiotemporal cuboids |
2 // |
3 = ST-KNN() // |
4 = ST-KNN() // |
5 = ST-KNN() // |
6 // Obtain the predicted values |
7 Put into // Save the predicted values into set |
8 End for |
9 Return the set of predictions |
3. Performance Evaluation
3.1. Data Preparation
3.1.1. Data Sources
3.1.2. Data Processing
3.2. Evaluation Metrics
3.3. Variable Estimation
3.3.1. Calibrating the Parameters of ST-KNN Model
3.3.2. Calibrating the Temporally Dependent Parameters
3.4. Test of Spatial Heterogeneity
3.5. Accuracy Comparison
3.6. Impact of Space-Time Weighting Matrix
3.7. Impact of Spatial and Temporal Dependencies
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Dataset | PeMS | Beijing |
---|---|---|
Time span | 15 August 2016–14 October 2016 | 1 March 2012–30 April 2012 |
Time interval | 5 min | 5 min |
Number of link | 59 | 30 |
Parameters | Values |
---|---|
0.009 | |
5 | |
2 | |
1 | |
2 |
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Cheng, S.; Lu, F.; Peng, P.; Wu, S. A Spatiotemporal Multi-View-Based Learning Method for Short-Term Traffic Forecasting. ISPRS Int. J. Geo-Inf. 2018, 7, 218. https://doi.org/10.3390/ijgi7060218
Cheng S, Lu F, Peng P, Wu S. A Spatiotemporal Multi-View-Based Learning Method for Short-Term Traffic Forecasting. ISPRS International Journal of Geo-Information. 2018; 7(6):218. https://doi.org/10.3390/ijgi7060218
Chicago/Turabian StyleCheng, Shifen, Feng Lu, Peng Peng, and Sheng Wu. 2018. "A Spatiotemporal Multi-View-Based Learning Method for Short-Term Traffic Forecasting" ISPRS International Journal of Geo-Information 7, no. 6: 218. https://doi.org/10.3390/ijgi7060218
APA StyleCheng, S., Lu, F., Peng, P., & Wu, S. (2018). A Spatiotemporal Multi-View-Based Learning Method for Short-Term Traffic Forecasting. ISPRS International Journal of Geo-Information, 7(6), 218. https://doi.org/10.3390/ijgi7060218