Conformal Prediction for Time Series with Modern Hopfield Networks
About
To quantify uncertainty, conformal prediction methods are gaining continuously more interest and have already been successfully applied to various domains. However, they are difficult to apply to time series as the autocorrelative structure of time series violates basic assumptions required by conformal prediction. We propose HopCPT, a novel conformal prediction approach for time series that not only copes with temporal structures but leverages them. We show that our approach is theoretically well justified for time series where temporal dependencies are present. In experiments, we demonstrate that our new approach outperforms state-of-the-art conformal prediction methods on multiple real-world time series datasets from four different domains.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Time Series Forecasting | solar | Delta-Cov2.88 | 42 | |
| Time Series Forecasting | Beijing | Delta-Cov-3.08 | 42 | |
| Time Series Forecasting | ACEA | Delta-Cov-4.81 | 42 | |
| Time Series Forecasting | Exchange | Delta-Covariance1.39 | 42 | |
| Prediction Interval Estimation | Sap flow | Delta Cov-0.121 | 39 | |
| Prediction Interval Estimation | Air 10 PM | Delta Cov-0.002 | 39 | |
| Prediction Interval Estimation | Air 25 PM | Delta Cov-0.002 | 39 | |
| Time Series Uncertainty Quantification | Beijing (test) | Delta-Cov-8.05 | 21 | |
| Time Series Uncertainty Quantification | Solar (test) | Delta Coverage-1.64 | 21 | |
| Time Series Uncertainty Quantification | ACEA (test) | Delta-Cov-3.58 | 21 |