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Adaptive trend estimation in financial time series via multiscale change-point-induced basis recovery

机译:通过多尺度变化点诱发的基础恢复在金融时间序列中进行自适应趋势估计

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Low-frequency financial returns can be modelled as centered around piecewise-constant trend functions which change at certain points in time. We propose a new stochastic time series framework which captures this feature. The main ingredient of our model is a hierarchically-ordered oscillatory basis of simple piecewise-constant functions. It differs from the Fourier-like bases traditionally used in time series analysis in that it is determined by change-points, and hence needs to be estimated from the data before it can be used. The resulting model enables easy simulation and provides interpretable decomposition of nonstationarity into short- and long-term components. The model permits consistent estimation of the multiscale change-point-induced basis via binary segmentation, which results in a variablespan moving-average estimator of the current trend, and allows for short-term forecasting of the average return.
机译:可以将低频财务收益建模为以分段恒定趋势函数为中心,该分段函数在某些时间点会发生变化。我们提出了一个捕获此功能的新的随机时间序列框架。我们模型的主要成分是简单的分段常数函数的分层振荡基础。它与时间序列分析中传统使用的傅立叶式基础不同,它是由变化点确定的,因此需要在使用前根据数据进行估算。生成的模型使仿真变得容易,并且可以将非平稳性分解为短期和长期成分。该模型允许通过二进制分段对多尺度变化点诱发的基础进行一致的估计,从而得出当前趋势的可变跨度移动平均估计器,并允许对平均收益率进行短期预测。

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