Optimization-based Online Conformal Prediction for Multi-step Forecasting
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Conformal prediction (CP) is well-suited for uncertainty quantification in time series forecasting due to its distribution-free coverage guarantees. However, existing multi-step methods often struggle to balance coverage validity with efficiency: they either calibrate horizons independently, ignoring temporal correlations, or enforce strict simultaneous coverage, resulting in overly conservative intervals. In this work, we propose O2CP: Optimization-based Online Conformal Prediction, a unified framework for online conformal prediction that explicitly models multi-step error dependencies without sacrificing long-term marginal coverage guarantees. We first prove that standard online conformal updates maintain validity as long as calibration parameters remain within a defined "safe" region. Leveraging this theoretical insight, we introduce a two-layer architecture: an outer layer that defines admissible parameter sets to ensure validity, and an inner layer that performs constrained optimization to model joint error distributions and minimize horizon-wide objectives. To make this computationally feasible, we develop a lightweight sampling strategy that estimates joint distributions without requiring large calibration sets. Extensive experiments on real-world datasets, including autonomous driving, climate forecasting, and public health, demonstrate that O2CP consistently outperforms state-of-the-art baselines, achieving target coverage with significantly sharper prediction intervals and reduced regret over long horizons.
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