Convolutionally Low-Rank Models with Modified Quantile Regression for Interval Time Series Forecasting
About
The quantification of uncertainty in prediction models is crucial for reliable decision-making, yet remains a significant challenge. Interval time series forecasting offers a principled solution to this problem by providing prediction intervals (PIs), which indicates the probability that the true value falls within the predicted range. We consider a recently established point forecasts (PFs) method termed Learning-Based Convolution Nuclear Norm Minimization (LbCNNM), which directly generates multi-step ahead forecasts by leveraging the convolutional low-rankness property derived from training data. While theoretically complete and empirically effective, LbCNNM lacks inherent uncertainty estimation capabilities, a limitation shared by many advanced forecasting methods. To resolve the issue, we modify the well-known Quantile Regression (QR) and integrate it into LbCNNM, resulting in a novel interval forecasting method termed LbCNNM with Modified Quantile Regression (LbCNNM-MQR). In addition, we devise interval calibration techniques to further improve the accuracy of PIs. Extensive experiments on over 100,000 real-world time series demonstrate the superior performance of LbCNNM-MQR.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Time Series Forecasting | M4 (Others) | -- | 10 | |
| Interval forecasting | M4 Yearly | MSIS33.046 | 8 | |
| Interval forecasting | M4 Monthly | MSIS9.373 | 8 | |
| Interval forecasting | M4 (Others) | MSIS31.162 | 8 | |
| Interval forecasting | M4 Overall | MSIS16.369 | 8 | |
| Interval forecasting | M4 Quarterly | MSIS11.297 | 8 | |
| Interval forecasting | Electricity | MSIS8.14 | 6 | |
| Interval forecasting | Traffic | MSIS12.2 | 6 | |
| Time Series Forecasting | M4 Yearly | Average Running Time (s)0.085 | 6 | |
| Time Series Forecasting | M4 Quarterly | Average Running Time (s)0.251 | 6 |