自回归模型的改进Bonferroni预测带

A. Staszewska-Bystrova
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引用次数: 0

摘要

联合预测带通常使用Bonferroni不等式构造。这种波段的缺点是宽度大,覆盖概率大。本文对构造自举预测带的基本Bonferroni方法提出了两种改进。这些都是基于高阶不等式和带宽的优化。该方法应用于单变量自回归过程的预测问题。通过蒙特卡罗实验研究了它们的性质。结果表明,在许多情况下,所提出的方法可以获得具有期望覆盖概率的相对较窄的预测带。
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Refined Bonferroni prediction bands for autoregressive models
Joint prediction bands are often constructed using Bonferroni’s inequality. The drawback of such bands may be their large width and excessive coverage probability. The paper proposes two refinements to the basic Bonferroni method of constructing bootstrap prediction bands. These are based on higher order inequalities and optimization of the width of the band. The procedures are applied to the problem of predicting univariate autoregressive processes. Their properties are studied by means of Monte Carlo experiments. It is shown that the proposed methods lead, in many scenarios, to obtaining relatively narrow prediction bands with desired coverage probabilities.
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