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首页> 外文期刊>Journal of Time Series Analysis >Detecting misspecifications in autoregressive conditional duration models and non-negative time-series processes
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Detecting misspecifications in autoregressive conditional duration models and non-negative time-series processes

机译:在自回归条件持续时间模型和非负时间序列过程中检测错误规格

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We develop a general theory to test correct specification of multiplicative error models of non-negative time-series processes, which include the popular autoregressive conditional duration (ACD) models. Both linear and nonlinear conditional expectation models are covered, and standardized innovations can have time-varying conditional dispersion and higher-order conditional moments of unknown form. No specific estimation method is required, and the tests have a convenient null asymptotic N(0,1) distribution. To reduce the impact of parameter estimation uncertainty in finite samples, we adopt Wooldridge's (1990a) device to our context and justify its validity. Simulation studies show that in the context of testing ACD models, finite sample correction gives better sizes in finite samples and are robust to parameter estimation uncertainty. And, it is important to take into account time-varying conditional dispersion and higher-order conditional moments in standardized innovations; failure to do so can cause strong overrejection of a correctly specified ACD model. The proposed tests have reasonable power against a variety of popular linear and nonlinear ACD alternatives.
机译:我们开发了一种通用理论来测试非负时间序列过程的乘性误差模型的正确规范,其中包括流行的自回归条件持续时间(ACD)模型。涵盖了线性和非线性条件期望模型,标准化的创新可以具有随时间变化的条件色散和未知形式的高阶条件矩。不需要特定的估计方法,并且测试具有方便的零渐近N(0,1)分布。为了减少有限样本中参数估计不确定性的影响,我们在上下文中采用了Wooldridge(1990a)的设备并证明了其有效性。仿真研究表明,在测试ACD模型的情况下,有限样本校正可在有限样本中提供更好的大小,并且对参数估计不确定性具有鲁棒性。并且,在标准创新中必须考虑时变条件分散和高阶条件矩。否则,可能会导致强烈拒绝正确指定的ACD模型。所提出的测试对于各种流行的线性和非线性ACD替代品具有合理的功效。

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