适度样本长度的可信格兰杰因果推理:一种跨样本验证方法

Richard Ashley, K. Tsang
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引用次数: 23

摘要

可信的格兰杰因果分析似乎需要样本后推理,因为众所周知,样本内拟合可能是实际预测有效性的不良指导。然而,样本后模型测试通常需要将数据先验地划分为“样本内”阶段——据称仅用于模型规范/估计——和“样本后”阶段,据称(仅在分析结束时)用于模型验证/测试目的。然而,在样本长度适中的情况下(例如,T≤150),这种划分通常是不可行的,这在机构安排随时间变化的季度数据集和/或月度数据集中都很常见,因为在这种情况下,没有足够的数据来可靠地分别实现这两个目的。下面提出了一个跨样本验证(CSV)测试程序,它既消除了前面提到的先验划分,也大大改善了这种权力与可信度的困境——保留了样本内测试的大部分权力(通过利用测试中的所有样本数据),同时也保留了样本后测试的大部分可信度(通过始终基于未用于估计特定模型系数的数据的模型预测)。模拟表明,就相对于样本内格兰杰-因果关系F检验而言,所付出的代价是可控的。对恩格尔和韦斯特[1]对宏观经济基本面与汇率之间因果关系的研究进行了重新分析,并给出了一个说明性应用;我们的分析改变了他们的几个结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credible Granger-Causality Inference with Modest Sample Lengths: A Cross-Sample Validation Approach
Credible Granger-causality analysis appears to require post-sample inference, as it is well-known that in-sample fit can be a poor guide to actual forecasting effectiveness. However, post-sample model testing requires an often-consequential a priori partitioning of the data into an “in-sample” period – purportedly utilized only for model specification/estimation – and a “post-sample” period, purportedly utilized (only at the end of the analysis) for model validation/testing purposes. This partitioning is usually infeasible, however, with samples of modest length – e.g., T ≤ 150 – as is common in both quarterly data sets and/or in monthly data sets where institutional arrangements vary over time, simply because there is in such cases insufficient data available to credibly accomplish both purposes separately. A cross-sample validation (CSV) testing procedure is proposed below which both eliminates the aforementioned a priori partitioning and which also substantially ameliorates this power versus credibility predicament – preserving most of the power of in-sample testing (by utilizing all of the sample data in the test), while also retaining most of the credibility of post-sample testing (by always basing model forecasts on data not utilized in estimating that particular model’s coefficients). Simulations show that the price paid, in terms of power relative to the in-sample Granger-causality F test, is manageable. An illustrative application is given, to a re-analysis of the Engel andWest [1] study of the causal relationship between macroeconomic fundamentals and the exchange rate; several of their conclusions are changed by our analysis.
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