Monash University
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Online Conformal Inference for Multi-Step Time Series Forecasting

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posted on 2025-07-23, 02:16 authored by Xiaoqian Wang, Rob J Hyndman
We consider the problem of constructing distribution-free prediction intervals for multi-step time series forecasting, with a focus on the temporal dependencies inherent in multi-step forecast errors. We establish that the optimal h-step-ahead forecast errors exhibit serial correlation up to lag (h-1) under a general non-stationary autoregressive data generating process. To leverage these properties, we propose the Autocorrelated Multi-step Conformal Prediction (AcMCP) method, which effectively incorporates autocorrelations in multi-step forecast errors, resulting in more statistically efficient prediction intervals. This method ensures theoreticall long-run coverage guarantees for multi-step prediction intervals, though we note that increased forecasting horizons may exacerbate deviations from the target coverage, particularly in the context of limited sample sizes. Additionally, we extend several easy-to-implement conformal prediction methods, originally designed for single-step forecasting, to accommodate multi-step scenarios. Through empirical evaluations, inclu ding simulations and applications to data, we demonstrate that AcMCP achieves coverage that closely aligns with the target within local windows, while providing adaptive prediction intervals that effectively respond to varying conditions.<p></p>

History

Classification-JEL

--

Creation date

2024-10-17

Working Paper Series Number

20/24

Length

35 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2024-20

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