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函数型时间序列中的渐进变化

Gradual Changes in Functional Time Series

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

中文导读

提出一种检测函数型时间序列均值函数渐进变化的方法,基于基准函数与各时点均值函数的最大偏差,并开发了假设检验和首次超阈值时间估计器,通过澳大利亚气温数据验证。

Abstract

ABSTRACT We consider the problem of detecting gradual changes in the sequence of mean functions from a not necessarily stationary functional time series. Our approach is based on the maximum deviation (calculated over a given time interval) between a benchmark function and the mean functions at different time points. We speak of a gradual change of size , if this quantity exceeds a given threshold . For example, the benchmark function could represent an average of yearly temperature curves from the pre‐industrial time, and we are interested in the question of whether the yearly temperature curves afterwards deviate from the pre‐industrial average by more than degrees Celsius, where the deviations are measured with respect to the sup‐norm. Using Gaussian approximations for high‐dimensional data, we develop a test for hypotheses of this type and estimators for the time when a deviation of size larger than appears for the first time. We prove the validity of our approach and illustrate the new methods by a simulation study and a data example, where we analyze yearly temperature curves at different stations in Australia.

时间序列分析函数型数据分析计量经济学统计学