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One-Dimensional Inference in Autoregressive Models With the Potential Presence of a Unit Root

机译:具有单位根势的自回归模型中的一维推断

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This paper examines the problem of testing and confidence set construction for one-dimensional functions of the coefficients in autoregressive (AR(p)) models with potentially persistent time series. The primary example concerns inference on impulse responses. A new asymptotic framework is suggested and some new theoretical properties of known procedures are demonstrated. I show that the likelihood ratio (LR) and LR +/- statistics for a linear hypothesis in an AR(p) can be uniformly approximated by a weighted average of local-to-unity and normal distributions. The corresponding weights depend on the weight placed on the largest root in the null hypothesis. The suggested approximation is uniform over the set of all linear hypotheses. The same family of distributions approximates the LR and LR +/- statistics for tests about impulse responses, and the approximation is uniform over the horizon of the impulse response. I establish the size properties of tests about impulse responses proposed by Inoue and Kilian (2002) and Gospodinov (2004), and theoretically explain some of the empirical findings of Pesavento and Rossi (2007). An adaptation of the grid bootstrap for impulse response functions is suggested and its properties are examined.
机译:本文研究了具有潜在持久时间序列的自回归(AR(p))模型中系数的一维函数的测试和置信集构造问题。主要示例涉及对冲激响应的推断。提出了一个新的渐近框架,并证明了已知程序的一些新的理论性质。我表明,AR(p)中线性假设的似然比(LR)和LR +/-统计量可以通过局部统一性和正态分布的加权平均值来统一近似。相应的权重取决于原假设中最大根上的权重。在所有线性假设的集合中,建议的近似值是一致的。相同的分布族近似于关于脉冲响应的测试的LR和LR +/-统计量,并且在脉冲响应的范围内近似一致。我建立了Inoue和Kilian(2002)和Gospodinov(2004)提出的关于冲激响应的测试的大小属性,并从理论上解释了Pesavento和Rossi(2007)的一些经验发现。提出了一种针对脉冲响应函数的网格引导程序,并对其性能进行了研究。

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