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首页> 外文期刊>Journal of Econometrics >Diagnostic Testing for Cointegration.
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Diagnostic Testing for Cointegration.

机译:协整诊断测试。

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We develop a sequence of tests for specifying the cointegrating rank of, possibly fractional, multiple time series. Memory parameters of observables are treated as unknown, as are those of possible cointegrating errors. The individual test statistics have standard null asymptotics and are related to Hausman specification test statistics: when the memory parameter is common to several series, an estimate of this parameter based on the assumption of no cointegration achieves an efficiency improvement over estimates based on individual series, whereas if the series are cointegrated the former estimate is generally inconsistent. However, a computationally simpler but asymptotically equivalent approach, which avoids explicit computation of the "efficient" estimate, is instead pursued here. Two versions of it are initially proposed, followed by one that robustifies to possible inequality between memory parameters of observables. Throughout, a semiparametric approach is pursued, modelling serial dependence only at frequencies near the origin, with the goal of validity under broad circumstances and computational convenience. The main development is in terms of stationary series, but an extension to non-stationary ones is also described. The algorithm for estimating cointegrating rank entails carrying out such tests based on potentially all subsets of two or more of the series, though outcomes of previous tests may render some or all subsequent ones unnecessary. A Monte Carlo study of finite sample performance is included.
机译:我们开发了一系列测试来指定可能为分数的多个时间序列的协整秩。可观察物的记忆参数以及可能的协整误差的记忆参数均视为未知。各个测试统计量具有标准的零渐近性,并且与Hausman规范测试统计量有关:当记忆参数为多个序列所共有时,基于无协整假设的此参数的估计比基于单个序列的估计可提高效率,相反,如果系列是协整的,则以前的估计通常是不一致的。然而,这里改为寻求一种计算上更简单但渐近等效的方法,该方法避免了显式计算“有效”估计。最初提出了它的两个版本,然后是一个版本,用于增强可观察对象的存储参数之间可能存在的不平等。贯穿整个过程,一直追求一种半参数方法,仅在接近原点的频率上对序列依赖性进行建模,目的是在广泛的环境下和计算方便的情况下保持有效性。主要的发展是在平稳序列方面,但也描述了对非平稳序列的扩展。估计协整等级的算法需要基于潜在的两个或多个系列的所有子集进行此类测试,尽管先前测试的结果可能会使一些或所有后续测试变得不必要。包括对有限样本性能的蒙特卡洛研究。

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