Online Localized Conformal Prediction
About
Conformal prediction is a framework that provides valid uncertainty quantification for general models with exchangeable data. However, in the online learning and time-series settings, exchangeability is not satisfied. Existing online conformal methods, such as adaptive conformal inference (ACI), can achieve long-run validity, yet they remain inefficient under covariate heterogeneity because they rely on global calibration. We propose \emph{Online Localized Conformal Prediction (OLCP)}, which combines online adaptation with covariate-dependent localization to better reflect heterogeneity. To reduce sensitivity to the localization bandwidth, we further develop \emph{OLCP-Hedge}, which performs bandwidth selection as an online expert aggregation problem using a constrained online convex optimization framework. Importantly, we provide coverage guarantees for both algorithms and demonstrate through simulations and real-data experiments that the proposed methods attain valid long-run coverage with narrower prediction sets than existing baselines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Online Conformal Prediction | Heterogeneous Simulation Scenario B | Coverage90.1 | 7 | |
| Online Conformal Prediction | Change Point Simulation Scenario C | Coverage90.1 | 7 | |
| Regression | elec2 | Coverage90 | 7 | |
| Regression | ILINet | Coverage90.4 | 7 | |
| Online Conformal Prediction | Stationary Simulation Scenario A | Coverage90 | 7 | |
| Regression | ETF volatility | Coverage90 | 7 |