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A MONTE CARLO STUDY ON THE SELECTION OF COINTEGRATING RANK USING INFORMATION CRITERIA

机译:基于信息标准的联合等级选择的蒙特卡罗研究

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We conduct Monte Carlo simulations to evaluate the use of information criteria (Akaike information criterion [AIC] and Schwarz information criterion [SC]) as an alternative to various probability-based tests for determining cointcgrating rank in multivariate analysis.First,information criteria are used to determine co-integrating rank given the lag order in a levels vector autoregression.Second,information criteria are used to determine the lag order and cointegrating rank simultaneously.Results show that AIC has an advantage over trace tests for cointe-grated or stationary processes in small samples.AIC does not perform well in large samples.The performance of SC is close to that of the trace test.SC shows better large sample results than AIC and the trace test,even if the series are close to nonstationary series or they contain large negative moving average components.We also find evidence that supports the joint estimation of lag order and cointegrating rank by the SC criterion.We conclude that information criteria can complement traditional parametric tests.
机译:我们进行了蒙特卡洛模拟,以评估信息标准(Akaike信息标准[AIC]和Schwarz信息标准[SC])的使用,以替代用于确定多变量分析中协同等级的各种基于概率的测试。首先,使用信息标准其次,采用信息准则同时确定滞后阶数和协整阶数。结果表明,对于ICG的协整或平稳过程,AIC优于跟踪测试的优势。小样本。AIC在大样本中表现不佳。SC的性能接近示踪测试。SC显示的大样本结果比AIC和示踪测试更好,即使该序列接近非平稳序列或包含我们还找到了支持SC准则对滞后阶次和协整秩进行联合估计的证据。排除了信息标准可以补充传统参数测试的可能性。

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