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Diligence in determining the appropriate form of stationarity

机译:努力确定适当的平稳形式

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Orientation: One of the most vexing problems of modelling time series data is determining the appropriate form of stationarity, as it can have a significant influence on the model's explanatory properties, which makes interpreting the results problematic.Research purpose: This article challenged the assumption that most financial time series are first differenced stationary. The common difference first, ask questions later approach was revisited by taking a more systematic approach when analysing the statistical properties of financial time series data.Motivation for the study: Since Nelson and Plosser's (1982) argued that many macroeconomic time series are difference stationary, many econometricians simply differenced data in order to achieve stationarity. However, the inherent properties of time series data have changed over the past 30 years. This necessitates a proper evaluation of the properties of data before deciding on the appropriate course of action, in order to avoid over-differencing which causes variables to lose their explanatory ability that leads to spurious results.Research approach, design and method: This article introduced a rigorous process that enables econometricians to determine the most appropriate form of stationarity, which is led by the underlying statistical properties of several financial and economic variables.Main findings: The results highlighted the importance of consulting the d parameter to makea more informed decision, rather than only assuming that the data are I(1). Evidence also suggested that the appropriate form of stationarity can vary, but emphasises the importance to consider a series to be fractionally differenced.Practical/managerial implications: Only when data are correctly classified and transformed accordingly will the data be neither under- nor over-differenced, thus enhancing the validity of the results generated by statistical models.Contribution/value-add: By utilising this rigorous process, econometricians will be able to generate more accurate out-of-sample forecasts, as already proven by Van Greunen, Heymans,Van Heerden and Van Vuuren (2014).
机译:方向:对时间序列数据建模最棘手的问题之一是确定平稳性的适当形式,因为它可能对模型的解释特性产生重大影响,这使得解释结果有问题。研究目的:本文对以下假设提出了挑战:大多数财务时间序列都是先固定不变的。在分析金融时间序列数据的统计特性时,首先采用了较为系统的方法,重新探讨了先有共异的问题。研究的动机:由于Nelson and Plosser(1982)认为许多宏观经济时间序列是固定不变的,许多计量经济学家只是为了实现平稳性而对数据进行了差异处理。但是,时间序列数据的固有属性在过去30年中发生了变化。因此,在决定采取适当的措施之前,有必要对数据的属性进行适当的评估,以避免产生差异过多而导致变量失去解释能力从而导致虚假结果的情况。研究方法,设计和方法:本文介绍了一个严格的过程,使计量经济学家能够确定最适当的平稳性,这由几个金融和经济变量的潜在统计属性决定。主要发现:结果强调了咨询d参数以做出更明智的决定的重要性,而比仅假设数据为I(1)。证据还表明,平稳性的适当形式可能会有所不同,但强调了考虑将序列进行分数差异的重要性实际/管理意义:只有正确地对数据进行了正确分类和转换,数据才不会被低差异或高差异化。贡献/增值:通过严格的过程,计量经济学家将能够生成更准确的样本外预测,正如Van Greunen,Heymans,Van所证明的那样Heerden和Van Vuuren(2014)。

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