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首页> 外文期刊>Journal of Time Series Analysis >PRINCIPAL COMPONENTS ANALYSIS OF PERIODICALLY CORRELATED FUNCTIONAL TIME SERIES
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PRINCIPAL COMPONENTS ANALYSIS OF PERIODICALLY CORRELATED FUNCTIONAL TIME SERIES

机译:周期相关函数时间序列的主成分分析

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Within the framework of functional data analysis, we develop principal component analysis for periodically correlated time series of functions. We define the components of the above analysis including periodic operator-valued filters, score processes, and the inversion formulas. We show that these objects are defined via a convergent series under a simple condition requiring summability of the Hilbert-Schmidt norms of the filter coefficients and that they possess optimality properties. We explain how the Hilbert space theory reduces to an approximate finite-dimensional setting which is implemented in a custom-build |R| package. A data example and a simulation study show that the new methodology is superior to existing tools if the functional time series exhibits periodic characteristics.
机译:在功能数据分析的框架内,我们针对周期性相关的时间序列开发主成分分析。我们定义了上述分析的组成部分,包括周期性的算子值过滤器,评分过程和反演公式。我们表明,这些对象是在要求滤波器系数的希尔伯特-施密特范数求和的简单条件下通过收敛级数定义的,并且它们具有最优性。我们将解释希尔伯特空间理论如何减少到在定制构建| R |中实现的近似有限维设置。包。数据示例和仿真研究表明,如果功能时间序列具有周期性特征,则新方法要优于现有工具。

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