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Bayesian Conditional Cointegration

机译:贝叶斯有条件的协整

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Cointegration is an important topic for time-series, and describes a relationship between two series in which a linear combination is stationary. Classically, the test for cointegration is based on a two stage process in which first the linear relation between the series is estimated by Ordinary Least Squares. Subsequently a unit root test is performed on the residuals. A well-known deficiency of this classical approach is that it can lead to erroneous conclusions about the presence of cointegration. As an alternative, we present a framework for estimating whether cointegration exists using Bayesian inference which is empirically superior to the classical approach. Finally, we apply our technique to model segmented cointegration in which cointegration may exist only for limited time. In contrast to previous approaches our model makes no restriction on the number of possible cointegration segments.
机译:协整是时间序列的重要主题,并描述了两个系列之间的关系,其中线性组合静止。经典上,协整的测试基于两个阶段过程,其中首先通过普通的最小二乘估计该系列之间的线性关系。随后对残留物进行单位根测试。这种经典方法的众所周知的缺陷是它可以导致关于共同组成的存在的错误结论。作为替代方案,我们介绍了一种估计协整使用贝叶斯推理的协整的框架,这些方法是经验上优于经典方法。最后,我们将我们的技术应用于模型分段协整的协整,其中协整只有限制时间存在。与以前的方法相比,我们的模型对可能的协整段的数量没有限制。

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