Functional principal component analysis (FPCA) has played an important role in the development of functional time series (FTS) analysis. This paper investigates how FPCA can be used to analyze cointegrated functional time series and propose a modification of FPCA as a novel statistical tool. Our modified FPCA not only provides an asymptotically more efficient estimator of the cointegrating vectors, but also leads to novel KPSS-type tests for examining some essential properties of cointegrated time series. As an empirical illustration, our methodology is applied to the time series of log-earning densities.
翻译:功能主要组成部分分析(FCCA)在制定功能时间序列(FTS)分析方面发挥了重要作用,本文件探讨了如何利用FPCA分析共同综合功能时间序列并提出修改FPCA作为新的统计工具。我们修改的FPCA不仅为组合矢量提供了无症状、效率更高的估算器,而且还为检查组合时间序列的一些基本特性提供了新型的KPSS类型测试。作为经验说明,我们的方法适用于日志学习密度的时间序列。