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Identification and frequency domain quasi‐maximum likelihood estimation of linearized dynamic stochastic general equilibrium models

机译:线性动态随机一般均衡模型的辨识和频域拟最大似然估计

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This paper considers issues related to identification, inference, and computation in linearized dynamic stochastic general equilibrium (DSGE) models. We first provide a necessary and sufficient condition for the local identification of the structural parameters based on the (first and) second order properties of the process. The condition allows for arbitrary relations between the number of observed endogenous variables and structural shocks, and is simple to verify. The extensions, including identification through a subset of frequencies, partial identification, conditional identification, and identification under general nonlinear constraints, are also studied. When lack of identification is detected, the method can be further used to trace out nonidentification curves. For estimation, restricting our attention to nonsingular systems, we consider a frequency domain quasi‐maximum likelihood estimator and present its asymptotic properties. The limiting distribution of the estimator can be different from results in the related literature due to the structure of the DSGE model. Finally, we discuss a quasi‐Bayesian procedure for estimation and inference. The procedure can be used to incorporate relevant prior distributions and is computationally attractive.
机译:本文考虑与线性动态随机一般均衡(DSGE)模型中的识别,推断和计算有关的问题。我们首先根据过程的(一阶和二阶)特性为结构参数的局部识别提供必要和充分的条件。该条件允许观察到的内生变量数与结构冲击之间具有任意关系,并且易于验证。还研究了扩展,包括通过子集的频率识别,部分识别,条件识别以及在一般非线性约束下的识别。当检测到缺乏识别性时,该方法可以进一步用于追踪非识别曲线。为了进行估计,我们将注意力集中在非奇异系统上,我们考虑了频域拟最大似然估计,并给出了其渐近性质。由于DSGE模型的结构,估计器的极限分布可能与相关文献中的结果有所不同。最后,我们讨论用于估计和推断的拟贝叶斯程序。该过程可用于合并相关的先验分布,并且在计算上具有吸引力。

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