Long memory estimation for complex-valued time series

被引:0
|
作者
Marina I. Knight
Matthew A. Nunes
机构
[1] University of York,Department of Mathematics
[2] Lancaster University,Department of Mathematics and Statistics, Fylde College
来源
Statistics and Computing | 2019年 / 29卷
关键词
Complex-valued time series; Hurst exponent; Irregular sampling; Long-range dependence; Wavelets;
D O I
暂无
中图分类号
学科分类号
摘要
Long memory has been observed for time series across a multitude of fields, and the accurate estimation of such dependence, for example via the Hurst exponent, is crucial for the modelling and prediction of many dynamic systems of interest. Many physical processes (such as wind data) are more naturally expressed as a complex-valued time series to represent magnitude and phase information (wind speed and direction). With data collection ubiquitously unreliable, irregular sampling or missingness is also commonplace and can cause bias in a range of analysis tasks, including Hurst estimation. This article proposes a new Hurst exponent estimation technique for complex-valued persistent data sampled with potential irregularity. Our approach is justified through establishing attractive theoretical properties of a new complex-valued wavelet lifting transform, also introduced in this paper. We demonstrate the accuracy of the proposed estimation method through simulations across a range of sampling scenarios and complex- and real-valued persistent processes. For wind data, our method highlights that inclusion of the intrinsic correlations between the real and imaginary data, inherent in our complex-valued approach, can produce different persistence estimates than when using real-valued analysis. Such analysis could then support alternative modelling or policy decisions compared with conclusions based on real-valued estimation.
引用
收藏
页码:517 / 536
页数:19
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