2022
DOI: 10.48550/arxiv.2202.07955
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Robust Nonparametric Distribution Forecast with Backtest-based Bootstrap and Adaptive Residual Selection

Abstract: Distribution forecast can quantify forecast uncertainty and provide various forecast scenarios with their corresponding estimated probabilities. Accurate distribution forecast is crucial for planning -for example when making production capacity or inventory allocation decisions. We propose a practical and robust distribution forecast framework that relies on backtest-based bootstrap and adaptive residual selection. The proposed approach is robust to the choice of the underlying forecasting model, accounts for … Show more

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