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Long memory and changepoint models: a spectral classification procedure

机译:长记忆和变化点模型:光谱分类程序

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摘要

Time series within fields such as finance and economics are often modelled using long memory processes. Alternative studies on the same data can suggest that series may actually contain a 'changepoint' (a point within the time series where the data generating process has changed). These models have been shown to have elements of similarity, such as within their spectrum. Without prior knowledge this leads to an ambiguity between these two models, meaning it is difficult to assess which model is most appropriate. We demonstrate that considering this problem in a time-varying environment using the time-varying spectrum removes this ambiguity. Using the wavelet spectrum, we then use a classification approach to determine the most appropriate model (long memory or changepoint). Simulation results are presented across a number of models followed by an application to stock cross-correlations and US inflation. The results indicate that the proposed classification outperforms an existing hypothesis testing approach on a number of models and performs comparatively across others.
机译:金融和经济学等领域的时间序列通常使用长记忆过程进行建模。对相同数据的替代研究可能表明,序列可能实际上包含一个“更改点”(时间序列中数据生成过程已更改的点)。这些模型已显示具有相似性,例如在其光谱范围内。如果没有先验知识,这将导致这两个模型之间存在歧义,这意味着很难评估哪种模型最合适。我们证明,在使用时变频谱的时变环境中考虑此问题可以消除这种歧义。然后,使用小波频谱,我们使用分类方法来确定最合适的模型(长存储或更改点)。在许多模型中均提供了仿真结果,然后将其应用于股票互相关和美国通货膨胀。结果表明,所提出的分类在许多模型上均优于现有的假设检验方法,并且在其他模型上的表现相对较好。

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