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基于经验特征泛函的函数型数据变点分析

Change Point Analysis for Functional Data Using Empirical Characteristic Functionals

Journal of Time Series Analysis · 2025
被引 4 · 同刊同年前 5%
ABS 3

中文导读

提出一种基于经验特征泛函的积分CUSUM过程来检测函数型数据分布变点的新方法,适用于低阶矩和序列相关数据,并在连续电力需求和高频资产价格收益数据中验证了有效性。

Abstract

ABSTRACT We develop a new method to detect change points in the distribution of functional data based on integrated CUSUM processes of empirical characteristic functionals. Asymptotic results are presented under conditions allowing for low‐order moments and serial dependence in the data establishing the limiting null‐distribution of the proposed test statistics, as well as their consistency to detect and localize change points in the distribution of functional data. A key consideration in defining these test statistics is the measure used to integrate the CUSUM process over function space. We show that using a measure generated by Brownian motion leads to generally consistent tests. Further, using this measure allows for computationally simple approximations of the necessary integrals, as well as simulation and permutation‐based methods to calibrate detection thresholds for change point analysis. The proposed methods are thoroughly investigated and compared to other existing functional data change point methods in simulation experiments, and are further applied to detect change points in models for continuous electricity demand and high‐frequency asset price returns.

函数型数据分析变点检测计量经济学统计学