DistMatch: Adaptive Binning via Distribution Matching for Robust Sequential Conformal Prediction
About
Sequential conformal prediction (CP) provides valid uncertainty quantification under the assumption of residual exchangeability. However, this assumption is often violated in real-world time series due to temporal dependencies and distributional shifts. While recent methods attempt to approximate exchangeability through reweighting, identifying optimal weights remains an open challenge. To address this limitation, we propose DistMatch, a binning-based method that recursively partitions residuals within a binary tree using the Kolmogorov-Smirnov (KS) statistic. We theoretically show that this partitioning induces approximately exchangeable leaves, thereby avoiding the need for reweighting. By applying quantile regression with online updates within each leaf, DistMatch enables locally adaptive inference and improves robustness to distributional shifts. Extensive experiments demonstrate that DistMatch outperforms existing sequential CP methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Sequential Conformal Prediction | Weather Rain | Win Rate6.8 | 24 | |
| Sequential Conformal Prediction | META Stock | Win Rate12 | 8 | |
| Sequential Conformal Prediction | Electricity | Win Rate1.97 | 8 | |
| Sequential Conformal Prediction | Solar Radiation | Win Rate1.54 | 8 | |
| Sequential Conformal Prediction | Wind Energy | Win Rate2.15 | 8 | |
| Sequential Conformal Prediction | NVDA Stock | Win Rate0.49 | 8 | |
| Probabilistic Forecasting | Elec | Winkler Score1.15 | 4 | |
| Probabilistic Forecasting | Wind | Winkler Score2.05 | 4 | |
| Sequential Conformal Prediction | solar | Coverage90 | 4 | |
| Sequential Conformal Prediction | Wind | Coverage90 | 4 |