Group-Sparse Smoothing for Longitudinal Models with Time-Varying Coefficients
Yu Lu, Tianni Zhang, Yuyao Wang, Mengfei Ran

TL;DR
This paper introduces TV-Select, a novel method for longitudinal data analysis that simultaneously identifies relevant variables and determines whether their effects are constant or time-varying, improving interpretability and accuracy.
Contribution
The paper proposes a unified framework combining variable selection and effect type determination using a doubly penalized approach with theoretical guarantees.
Findings
TV-Select outperforms competing methods in simulation studies.
It achieves more accurate variable and effect structure recovery.
The method provides smoother and more interpretable effect estimates.
Abstract
Longitudinal data analysis is fundamental for understanding dynamic processes in biomedical and social sciences. Although varying coefficient models (VCMs) provide a flexible framework by allowing covariate effects to evolve over time, fitting all effects as time-varying may lead to overfitting, efficiency loss, and reduced interpretability when some effects are actually constant. In contrast, standard linear mixed models (LMMs) may suffer substantial bias when temporal heterogeneity is ignored. To address this issue, we propose time-varying effect selection, TV-Select, a unified framework for structural identification that simultaneously selects relevant variables and determines whether their effects are constant or time-varying. The proposed method decomposes each coefficient function into a time-invariant mean component and a centered time-varying deviation, where the latter is…
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Taxonomy
TopicsStatistical Methods and Inference · Domain Adaptation and Few-Shot Learning · Face and Expression Recognition
