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Automatic Specification Testing for Vector Autoregressions and Multivariate Nonlinear Time Series Models

机译:向量自回归和多元非线性时间序列模型的自动规格检验

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摘要

This article introduces an automatic test for the correct specification of a vector autoregression (VAR) model. The proposed test statistic is a Portmanteau statistic with an automatic selection of the order of the residual serial correlation tested. The test presents several attractive characteristics: simplicity, robustness, and high power in finite samples. The test is simple to implement since the researcher does not need to specify the order of the autocorrelation tested and the proposed critical values are simple to approximate, without resorting to bootstrap procedures. In addition, the test is robust to the presence of conditional heteroscedasticity of unknown form and accounts for estimation uncertainty without requiring the computation of large-dimensional inverses of near-to-singularity covariance matrices. The basic methodology is extended to general nonlinear multivariate time series models. Simulations show that the proposed test presents higher power than the existing ones for models commonly employed in empirical macroeconomics and empirical finance. Finally, the test is applied to the classical bivariate VAR model for GNP (gross national product) and unemployment of Blanchard and Quah (1989) and Evans (1989). Online supplementary material includes proofs and additional details.
机译:本文介绍了针对向量自回归(VAR)模型的正确规范的自动测试。提议的测试统计量是Portmanteau统计量,可以自动选择要测试的残差序列相关性的顺序。该测试具有几个吸引人的特性:有限样本中的简单性,鲁棒性和高功率。该测试易于实现,因为研究人员无需指定测试的自相关的顺序,并且所提出的临界值很容易近似,而无需借助自举程序。另外,该测试对于未知形式的条件异方差的存在具有鲁棒性,并且无需估计近似奇异协方差矩阵的大尺寸逆矩阵即可解决估计不确定性。基本方法已扩展到一般的非线性多元时间序列模型。仿真表明,对于经验宏观经济学和经验金融中常用的模型,所提出的测试具有比现有模型更高的功效。最后,该检验适用于用于国民生产总值(GNP)和Blanchard and Quah(1989)和Evans(1989)失业的经典双变量VAR模型。在线补充材料包括证明和其他详细信息。

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