统计学习
计算机科学
人工智能
计量经济学
机器学习
数学
作者
Jingshen Wang,Lilun Du,Changliang Zou,Zhenke Wu
出处
期刊:Statistica Sinica
[Statistica Sinica (Institute of Statistical Science)]
日期:2024-04-08
标识
DOI:10.5705/ss.202023.0195
摘要
Technological advances have necessitated statistical methodologies for analyzing large-scale datastreams comprising multiple indefinitely time series.This manuscript proposes a dynamic tracking and screening (DTS) framework for online learning and model updating.Utilizing the sequential nature of datastreams, a robust estimation approach is developed under a linear varying coefficient model framework.This accommodates unequally-spaced design points and updates coefficient estimates without storing historical data.A data-driven choice of an optimal smoothing parameter is proposed, alongside a new multiple testing procedure for the streaming environment.Statistical guarantees of the procedure are provided, along with simulation studies on its finite-sample performance.The methods are demonstrated through a mobile health example estimating when subjects' sleep and physical activities unusually influence their mood.
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