Parameter Identification in an Estimated New Keynesian Open Economy Model

Malin Adolfson, J. Lindé
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引用次数: 6

Abstract

In this paper, we use Monte Carlo methods to study the small sample properties of the classical maximum likelihood (ML) estimator in artificial samples generated by the New- Keynesian open economy DSGE model estimated by Adolfson et al. (2008) with Bayesian techniques. While asymptotic identification tests show that some of the parameters are weakly identified in the model and by the set of observable variables we consider, we document that ML is unbiased and has low MSE for many key parameters if a suitable set of observable variables are included in the estimation. These findings suggest that we can learn a lot about many of the parameters by confronting the model with data, and hence stand in sharp contrast to the conclusions drawn by Canova and Sala (2009) and Iskrev (2008). Encouraged by our results, we estimate the model using classical techniques on actual data, where we use a new simulation based approach to compute the uncertainty bands for the parameters. From a classical viewpoint, ML estimation leads to a significant improvement in fit relative to the log-likelihood computed with the Bayesian posterior median parameters, but at the expense of some the ML estimates being implausible from a microeconomic viewpoint. We interpret these results to imply that the model at hand suffers from a substantial degree of model misspecification. This interpretation is supported by the DSGE-VAR( ) analysis in Adolfson et al. (2008). Accordingly, we conclude that problems with model misspecification, and not primarily weak identification, is the main challenge ahead in developing quantitative macromodels for policy analysis.
估计的新凯恩斯主义开放经济模型中的参数识别
在本文中,我们使用蒙特卡罗方法研究了由Adolfson等人(2008)用贝叶斯技术估计的新凯恩斯主义开放经济DSGE模型生成的人工样本中经典最大似然(ML)估计量的小样本性质。虽然渐近识别测试表明,一些参数在模型和我们考虑的可观察变量集中被弱识别,但我们证明,如果在估计中包含一组合适的可观察变量,ML是无偏的,并且对于许多关键参数具有低MSE。这些发现表明,我们可以通过与数据对抗模型来了解许多参数,因此与Canova和Sala(2009)以及Iskrev(2008)得出的结论形成鲜明对比。受到我们的结果的鼓舞,我们使用经典技术对实际数据进行模型估计,其中我们使用一种新的基于模拟的方法来计算参数的不确定性波段。从经典的观点来看,ML估计相对于使用贝叶斯后验中位数参数计算的对数似然会导致拟合的显着改善,但从微观经济学的角度来看,一些ML估计是不可信的。我们解释这些结果意味着,手头的模型遭受了很大程度的模型规格错误。Adolfson等人(2008)的DSGE-VAR()分析支持了这一解释。因此,我们得出结论,模型错误规范的问题,而不是主要的弱识别,是发展定量宏观模型用于政策分析的主要挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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