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首页> 外文期刊>Econometric Reviews >SMALL SAMPLE ESTIMATION BIAS IN GARCH MODELS WITH ANY NUMBER OF EXOGENOUS VARIABLES IN THE MEAN EQUATION
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SMALL SAMPLE ESTIMATION BIAS IN GARCH MODELS WITH ANY NUMBER OF EXOGENOUS VARIABLES IN THE MEAN EQUATION

机译:均值方程中具有任意数量外生变量的GARCH模型中的小样本估计偏差

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摘要

D In this article we show how bias approximations for the quasi maximum likelihood estimators of the parameters in Generalized Autoregressive Conditional Heteroskedastic (GARCH)(p,q) models change when any number of exogenous variables are included in the mean equation. The approximate biases are shown to vary in an additive and proportional way in relation to the number of exogenous variables, and they do not depend on the moments of the regressors under the correct specification of the model. This suggests a rule of thumb in testing for misspecification in GARCH models. We also extend the theoretical bias approximations given in Linton (1997) for the GARCH(1, 1). Because the expressions are not in closed form, we concentrate in detail, and for simplicity of interpretation, on the ARCH(l) model. At each stage, we check our theoretical results by simulation and generally, xve find that the approximations are quite accurate for sample sizes of at least 50. We find that the biases are not trivial in some circumstances and we discuss how the bias approximations may be used, in practice, to reduce the bias. We also carry out simulations for the GARCH(l.l) model and shmv that the biases change as predicted by the approximations when the mean equation is augmented. Finally, we illustrate tlie usefulness of our approach for U.S. monthly inflation rates.
机译:D在本文中,我们显示了当均值方程中包含任意数量的外生变量时,广义自回归条件异方差(GARCH)(p,q)模型中参数的拟最大似然估计器的偏差近似如何变化。结果表明,近似偏差相对于外生变量的数量以累加和成比例的方式变化,并且在模型的正确规范下,它们不依赖于回归变量的矩。这表明在测试GARCH模型中的错误指定时要有经验。我们还扩展了Linton(1997)中针对GARCH(1,1)给出的理论偏差近似值。因为这些表达式不是封闭形式,所以我们将详细内容集中在ARCH(l)模型上,并且为了简化解释。在每个阶段,我们通过仿真检查我们的理论结果,并且通常,xve发现,对于至少50个样本量,近似值非常准确。我们发现在某些情况下偏差并非无关紧要,并且我们讨论了偏差近似值如何在实践中用于减少偏差。我们还对GARCH(l.l)模型进行了模拟,并通过shmv证明了当均值方程增加时,偏差随近似值的变化而预测。最后,我们说明了这种方法对于美国每月通货膨胀率的实用性。

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