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Granger-causality inference in the presence of gaps: An equidistant missing-data problem for non-synchronous recorded time series data

机译:GANGER-因果关系推断在空隙的存在下:非同步录制时间序列数据的等距缺失数据问题

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The inference of causal interactions from incomplete data represents a major issue in many areas of applications. The incompleteness of data has different directions. The direction of interest in this manuscript is the collection of data whose measurements are sampled at equally spaced intervals with missing observations. This direction has two different scenarios: either for synchronously or non-synchronously recorded data. There are many known gap-filling techniques, however, each has its own limitations. In addition, the presence of gaps violates the underlying assumptions of the existing standard time series analysis techniques especially in the framework of Granger-causality concept, such as Directed Partial Correlation (DPC). This results in incorrect misleading conclusions about the inferred interaction structure. Therefore, the implications of applying the concept of Granger-causality based DPC are presented. To this end, a new extended methodology is proposed based on a specific shifting technique to overcome the shortcomings of the standard DPC technique. The proposed methodology provides an evidence that it is possible to infer the underlying causality structure even in the presence of gaps for nonsynchronously recorded data. This manuscript presents the problem at hand for stock market time series analysis, as a case study. (C) 2019 Elsevier B.V. All rights reserved.
机译:来自不完整数据的因果关系的推动代表了许多应用领域的主要问题。数据的不完整性具有不同的方向。此稿件中的感兴趣的方向是数据集合,其测量以缺失观察的同等间隔间隔进行采样。此方向具有两个不同的场景:用于同步或非同步录制的数据。有许多已知的间隙填充技术,但是,每个都有自己的限制。此外,间隙的存在违反了现有标准时间序列分析技术的潜在假设,尤其是格兰杰 - 因果概念框架,例如指向部分相关性(DPC)。这导致关于推断的相互作用结构的误导性结论不正确。因此,提出了应用格兰杰 - 因果的DPC概念的影响。为此,基于特定转换技术提出了一种新的扩展方法,以克服标准DPC技术的缺点。所提出的方法提供了一种证据,即使在不同步地记录数据的间隙存在下,也可以推断出潜在的因果关系。这款手稿呈现出股票市场时间序列分析的问题,如案例研究。 (c)2019 Elsevier B.v.保留所有权利。

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