泰勒规则研究中的方法论问题

Q4 Economics, Econometrics and Finance Journal for Studies in Economics and Econometrics Pub Date : 2023-04-03 DOI:10.1080/03796205.2023.2201473
Chung Yan Sam, R. Mcnown, S. Goh, K. Goh
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引用次数: 0

摘要

摘要本文对典型泰勒规则研究中普遍采用的方法方法提出了关注。我们发现许多关于泰勒规则的实证研究没有遵循必要的计量经济学程序。这些研究在检验和估计中忽略了单位根、协整和序列相关的存在。泰勒规则方程通常是用水平来估计的。我们表明,泰勒规则可以是一个不平衡回归,涉及I(0)和I(1)个变量的混合物。如果变量不是协整的,并且使用水平变量估计泰勒规则方程,则可能出现伪回归。此外,泰勒规则的经验模型通常包含因变量的滞后,方程残差是序列相关的。滞后的因变量和序列相关残差的存在会导致最小二乘估计的偏差和不一致。为了说明我们的论点,我们重新审视了最近的两篇论文,指出了典型泰勒规则研究中普遍存在的计量经济学问题。我们表明,对单个序列的时间序列性质的不充分分析和估计方程的诊断检查往往会导致关于泰勒规则经验有效性的无效结论。我们演示了自回归分布滞后方法如何克服这些问题,以及如何有效地估计方程。
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Methodological problems in studies on the Taylor rule
Abstract This paper raises concerns about the methodological approaches commonly adopted in typical Taylor rule studies. We find that many empirical studies on the Taylor rule do not follow the required econometric procedures. These studies ignore the presence of unit roots, cointegration, and serial correlation in their tests and estimation. The Taylor rule equation is typically estimated in levels. We show that the Taylor rule can be an unbalanced regression that involves a mixture of I(0) and I(1) variables. Spurious regressions may occur if the variables are not cointegrated and the Taylor rule equation is estimated using variables in levels. In addition, empirical models of the Taylor rule commonly include lags of the dependent variable, and equation residuals are serially correlated. The presence of lagged dependent variables and serially correlated residuals will cause biased and inconsistent least squares estimators. To illustrate our arguments, we re-examine two recent papers to point out the econometric problems that are general in typical Taylor rule studies. We show that an inadequate analysis of the time series properties of the individual series and diagnostic checks of the estimated equations can often lead to invalid conclusions about the empirical validity of the Taylor rule. We demonstrate how autoregressive distributed lag methods can overcome these issues and how the equation can be estimated efficiently.
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来源期刊
Journal for Studies in Economics and Econometrics
Journal for Studies in Economics and Econometrics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
0.80
自引率
0.00%
发文量
14
期刊介绍: Published by the Bureau for Economic Research and the Graduate School of Business, University of Stellenbosch. Articles in the field of study of Economics (in the widest sense of the word).
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