Abstract
Uncertainty is an essential consideration for time series forecasting tasks. In this work, we focus on quantifying the uncertainty of traffic forecasting from a unified perspective. We develop a novel traffic forecasting framework, namely Deep Spatio-Temporal Uncertainty Quantification (DeepSTUQ), which can estimate both aleatoric and epistemic uncertainty. Specifically, we first leverage a spatio-temporal model to model the complex spatio-temporal correlations of traffic data. Subsequently, two independent sub-neural networks maximizing the heterogeneous log-likelihood are developed to estimate aleatoric uncertainty. To estimate epistemic uncertainty, we combine the merits of variational inference and deep ensembling by integrating the Monte Carlo dropout and the Adaptive Weight Averaging re-training methods, respectively. Furthermore, to relax the Gaussianity assumption, mitigate overfitting, and improve horizon-wise uncertainty quantification performance, we define a new calibration method called Multi-horizon Conformal Calibration (MHCC). Finally, we provide a theoretical analysis of the proposed unified approach based on the PAC-Bayes theory. Extensive experiments are conducted on four public datasets, and the empirical results suggest that the proposed method outperforms state-of-the-art methods in terms of both point prediction and uncertainty quantification.
Original language | English |
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Article number | 10242138 |
Journal | IEEE Transactions on Knowledge and Data Engineering |
Pages (from-to) | 1-18 |
Number of pages | 18 |
ISSN | 1041-4347 |
DOIs | |
Publication status | Published - 6 Sept 2023 |
Bibliographical note
Publisher Copyright:IEEE
Keywords
- Calibration
- Computational modeling
- Correlation
- Data models
- Deep ensembling
- Forecasting
- model calibration
- PAC- bayes
- Predictive models
- traffic forecasting
- Uncertainty
- uncertainty quantification
- variational inference