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A consistent test for nonlinear out of sample predictive accuracy

机译:非线性超出样本预测准确性的一致性测试

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In this paper, we draw on both the consistent specification testing and the predictive ability testing literatures and propose an integrated conditional moment type predictive accuracy test that is similar in spirit to that developed by Bierens (J.Econometr. 20 (1982) 105; Econometrica 58 (1990) 1443) and Bierens and Ploberger (Econometrica 65 (1997) 1129). The test is consistent against generic nonlinear alternatives, and is designed for comparing nested models. One important feature of our approach is that the same loss function is used for in-sample estimation and out-of-sample prediction. In this way, we rule out the possibility that the null model can outperform the nesting generic alternative model. It turns out that the limiting distribution of the ICM type test statistic that we propose is a functional of a Gaussian process with a covariance kernel that reflects both the time series structure of the data as well as the contribution of parameter estimation error. As a consequence, critical values that are data dependent and cannot be directly tabulated. One approach in this case is to obtain critical value upper bounds using the approach of Bierens and Ploberger (Econometrica 65 (1997) 1129). Here, we establish the validity of a conditional p-value method for constructing critical values. The method is similar in spirit to that proposed by Hansen (Econometrica 64 (1996) 413) and Inoue (Econometric Theory 17 (2001) 156), although we additionally account for parameter estimation error. Ina series of Monte Carlo experiments, the finite sample properties of three variants of the predictive accuracy test are examined. Our findings suggest that all three variants of the test have good finite sample properties when quadratic loss is specified, even for samples as small as 600 observations. However, non-quadratic loss functions such as linex loss require larger sample sizes (of 1000 observations or more) in order to ensure reasonable finite sample performance.
机译:在本文中,我们借鉴了一致的规范测试和预测能力测试文献,并提出了一种综合的条件矩型预测精度测试,其实质与Bierens(J.Econometr。20(1982)105; Econometrica 58(1990)1443)和Bierens和Ploberger(Econometrica 65(1997)1129)。该测试与通用的非线性替代方法保持一致,并且旨在比较嵌套模型。我们方法的一个重要特征是,相同的损失函数用于样本内估计和样本外预测。这样,我们排除了空模型可能胜过嵌套通用替代模型的可能性。事实证明,我们提出的ICM类型测试统计量的极限分布是具有协方差核的高斯过程的函数,该协方差核既反映了数据的时间序列结构,又反映了参数估计误差的影响。结果,临界值取决于数据并且不能直接制成表格。在这种情况下,一种方法是使用Bierens和Ploberger的方法获得临界值的上限(Econometrica 65(1997)1129)。在这里,我们建立了构造临界值的条件p值方法的有效性。尽管我们另外考虑了参数估计误差,但该方法在本质上类似于Hansen(Econometrica 64(1996)413)和Inoue(Econometric Theory 17(2001)156)提出的方法。在一系列的蒙特卡洛实验中,检查了预测准确性测试的三个变体的有限样本属性。我们的发现表明,当指定了二次损失时,即使对于只有600个观察值的样本,该测试的所有三个变体都具有良好的有限样本属性。但是,非二次损失函数(例如线损)需要更大的样本量(1000个观察值或更多),以确保合理的有限样本性能。

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