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Characterizing and modelling cyclic behaviour in non-stationary time series through multi-resolution analysis

机译:通过多分辨率分析表征和模拟非平稳时间序列中的循环行为

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A method based on wavelet transform is developed to characterize variations at multiple scales in non-stationary time series. We consider two different financial time series, S&P CNX Nifty closing index of the National Stock Exchange (India) and Dow Jones industrial average closing values. These time series are chosen since they are known to comprise of stochastic fluctuations as well as cyclic variations at different scales. The wavelet transform isolates cyclic variations at higher scales when random fluctuations are averaged out; this corroborates correlated behaviour observed earlier in financial time series through random matrix studies. Analysis is carried out through Haar, Daubechies-4 and continuous Morlet wavelets for studying the character of fluctuations at different scales and show that cyclic variations emerge at intermediate time scales. It is found that Daubechies family of wavelets can be effectively used to capture cyclic variations since these are local in nature. To get an insight into the occurrence of cyclic variations, we then proceed to model these wavelet coefficients using genetic programming (GP) approach and using the standard embedding technique in the reconstructed phase space. It is found that the standard methods (GP as well as artificial neural networks) fail to model these variations because of poor convergence. A novel interpolation approach is developed that overcomes this difficulty. The dynamical model equations have, primarily, linear terms with additive Pad??-type terms. It is seen that the emergence of cyclic variations is due to an interplay of a few important terms in the model. Very interestingly GP model captures smooth variations as well as bursty behaviour quite nicely.
机译:提出了一种基于小波变换的方法来表征非平稳时间序列中多个尺度的变化。我们考虑两个不同的财务时间序列,即国家证券交易所(印度)的S&P CNX Nifty收盘指数和道琼斯工业平均收盘价。选择这些时间序列是因为已知它们包含随机波动以及不同范围的周期性变化。当对随机波动进行平均时,小波变换可以隔离较大范围的周期性变化。通过随机矩阵研究,证实了金融时间序列中较早观察到的相关行为。通过Haar,Daubechies-4和连续Morlet小波进行分析,以研究不同尺度下的波动特征,并表明在中间时间尺度上出现了周期性变化。发现Daubechies小波家族可以有效地捕获周期性变化,因为它们本质上是局部的。为了深入了解周期性变化的发生,我们接着使用遗传编程(GP)方法并在重建的相空间中使用标准嵌入技术对这些小波系数进行建模。发现由于收敛性差,标准方法(GP和人工神经网络)无法对这些变化进行建模。克服了这一困难的新型插补方法被开发出来。动力学模型方程主要有线性项和加法Padδ型项。可以看出,周期性变化的出现是由于模型中一些重要术语的相互作用。有趣的是,GP模型很好地捕获了平滑的变化以及突发行为。

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