AI RESEARCH
RareCP: Regime-Aware Retrieval for Efficient Conformal Prediction
arXiv CS.LG
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ArXi:2605.08857v1 Announce Type: new Recent advances in uncertainty quantification for time series forecasting show that conformal prediction can provide reliable prediction intervals, yet standard conformal methods are often inefficient under temporal dependence, drift, and heterogeneous error behavior. Existing methods typically either update miscoverage rates over time or learn unconstrained calibration weights, without explicitly separating two central sources of nonstationarity: smoothly drifting error distributions and co-existing distinct error regimes. We.