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A case study of the residual-based cointegration procedure

机译:基于残差的协整过程的案例研究

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The study of long-run equilibrium processes is a significant component of economic and finance theory. The Johansen technique for identifying the existence of such long-run stationary equilibrium conditions among financial time series allows the identification of all potential linearly independent cointegrating vectors within a given system of eligible financial time series. The practical application of the technique may be restricted, however, by the pre-condition that the underlying data generating process fits a finite-order vector autoregression (VAR) model with white noise. This paper studies an alternative method for determining cointegrating relationships without such a pre-condition. The method is simple to implement through commonly available statistical packages. This ‘residual-based cointegration’ (RBC) technique uses the relationship between cointegration and univariate Box-Jenkins ARIMA models to identify cointegrating vectors through the rank of the covariance matrix of the residual processes which result from the fitting of univariate ARIMA models. The RBC approach for identifying multivariate cointegrating vectors is explained and then demonstrated through simulated examples. The RBC and Johansen techniques are then both implemented using several real-life financial time series.
机译:长期均衡过程的研究是经济和金融理论的重要组成部分。用于确定金融时间序列中这种长期平稳均衡条件是否存在的Johansen技术可以确定给定金融时间序列系统中所有潜在的线性独立协整向量。但是,该技术的实际应用可能受到以下前提的限制,即前提是基础数据生成过程适合于带有白噪声的有限阶向量自回归(VAR)模型。本文研究了一种无需先决条件即可确定协整关系的替代方法。该方法易于通过常用的统计软件包实施。这种“基于残差的协整”(RBC)技术利用协整和Boxes-Jenkins单变量ARIMA模型之间的关系,通过残差协方差矩阵对单变量ARIMA模型的拟合而得出的协整向量进行识别。介绍了用于识别多元协整向量的RBC方法,然后通过仿真示例进行了演示。然后,RBC和Johansen技术都可以使用几个真实的财务时间序列来实现。

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