Conformal Prediction with Time-Series Data via Sequential Conformalized Density Regions
arXiv stat.ML / 4/9/2026
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Key Points
- The paper introduces Sequential Conformalized Density Regions (SCDR), a conformal prediction framework tailored to time-series that provides an asymptotic guarantee on conditional coverage.
- SCDR builds initial predictive regions from estimated conditional highest-density regions and then applies a quantile random-forest–based conformal adjustment to handle the non-exchangeable structure of time-series.
- The method can generate both standard prediction intervals and disconnected prediction sets, enabling detection or representation of bifurcation-like behavior in the target dynamics.
- Theoretical results show asymptotic guaranteed coverage under regularity conditions, along with a “doubly robust” property based on correct density model specification and/or appropriately modeled nonlinear autoregressive score structure.
- Experiments on simulations and real datasets (Old Faithful and Australian electricity usage) indicate improved empirical coverage and more informative set sizes versus existing approaches, including narrower or multi-interval sets where applicable.
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