On Bootstrapping Tests of Equal Forecast Accuracy for Nested Models

F. Doko Tchatoka, Qazi Haque
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Abstract

The asymptotic distributions of the recursive out-of-sample forecast accuracy test statistics depend on stochastic integrals of Brownian motion when the models under comparison are nested. This often complicates their implementation in practice because the computation of their asymptotic critical values is costly. Hansen and Timmermann (2015, Econometrica) propose a Wald approximation of the commonly used recursive F-statistic and provide a simple characterization of the exact density of its asymptotic distribution. However, this characterization holds only when the larger model has one extra predictor or the forecast errors are homoscedastic. No such closed-form characterization is readily available when the nesting involves more than one predictor and heteroskedasticity is present. We first show both the recursive F-test and its Wald approximation have poor finite-sample properties, especially when the forecast horizon is greater than one. We then propose an hybrid bootstrap method consisting of a block moving bootstrap (which is nonparametric) and a residual based bootstrap for both statistics, and establish its validity. Simulations show that our hybrid bootstrap has good finite-sample performance, even in multi-step ahead forecasts with heteroscedastic or autocorrelated errors, and more than one predictor. The bootstrap method is illustrated on forecasting core inflation and GDP growth.
嵌套模型等预报精度的自举检验
当比较模型嵌套时,递推样本外预测精度检验统计量的渐近分布依赖于布朗运动的随机积分。这通常使它们在实践中的实现变得复杂,因为它们的渐近临界值的计算是昂贵的。Hansen和Timmermann (2015, Econometrica)提出了常用递归f统计量的Wald近似,并提供了其渐近分布的精确密度的简单表征。然而,只有当较大的模型有一个额外的预测器或预测误差是均方差时,这种特征才成立。当嵌套涉及多个预测因子并且存在异方差时,不存在这种封闭形式的表征。我们首先表明递归f检验及其Wald近似具有较差的有限样本性质,特别是当预测范围大于1时。然后,我们提出了一种混合自举方法,该方法由块移动自举(非参数)和基于残差的自举组成,并验证了其有效性。仿真结果表明,即使在具有异方差或自相关误差和多个预测器的多步预测中,我们的混合自举方法也具有良好的有限样本性能。用自举法对核心通货膨胀和GDP增长进行了预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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