Conformal prediction for multi-dimensional time series by ellipsoidal sets
About
Conformal prediction (CP) has been a popular method for uncertainty quantification because it is distribution-free, model-agnostic, and theoretically sound. For forecasting problems in supervised learning, most CP methods focus on building prediction intervals for univariate responses. In this work, we develop a sequential CP method called $\texttt{MultiDimSPCI}$ that builds prediction $\textit{regions}$ for a multivariate response, especially in the context of multivariate time series, which are not exchangeable. Theoretically, we estimate $\textit{finite-sample}$ high-probability bounds on the conditional coverage gap. Empirically, we demonstrate that $\texttt{MultiDimSPCI}$ maintains valid coverage on a wide range of multivariate time series while producing smaller prediction regions than CP and non-CP baselines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multivariate Conformal Prediction | Traffic dy=8 (test) | Coverage97.1 | 20 | |
| Multivariate Conformal Prediction | Traffic dy=4 (test) | Coverage96.8 | 20 | |
| Multivariate Conformal Prediction | Wind dy=2 (test) | Coverage97.4 | 20 | |
| Multivariate Conformal Prediction | Traffic dy=2 (test) | Coverage96.3 | 20 | |
| Multivariate Conformal Prediction | Solar dy=4 (test) | Coverage97.6 | 20 | |
| Multivariate Conformal Prediction | Wind dy=8 (test) | Coverage95.1 | 20 | |
| Multivariate Conformal Prediction | Solar dy=2 (test) | Coverage96.9 | 20 | |
| Multivariate Conformal Prediction | Wind dy=4 (test) | Coverage95.6 | 20 |