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Unified Inference for Sparse and Dense Longitudinal Data in Time‐varying Coefficient Models
Author(s) -
Chen Yixin,
Yao Weixin
Publication year - 2017
Publication title -
scandinavian journal of statistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.359
H-Index - 65
eISSN - 1467-9469
pISSN - 0303-6898
DOI - 10.1111/sjos.12253
Subject(s) - inference , smoothing , mathematics , statistical inference , kernel smoother , longitudinal data , mixed model , kernel (algebra) , algorithm , statistics , kernel method , computer science , artificial intelligence , data mining , combinatorics , radial basis function kernel , support vector machine
Time‐varying coefficient models are widely used in longitudinal data analysis. These models allow the effects of predictors on response to vary over time. In this article, we consider a mixed‐effects time‐varying coefficient model to account for the within subject correlation for longitudinal data. We show that when kernel smoothing is used to estimate the smooth functions in time‐varying coefficient models for sparse or dense longitudinal data, the asymptotic results of these two situations are essentially different. Therefore, a subjective choice between the sparse and dense cases might lead to erroneous conclusions for statistical inference. In order to solve this problem, we establish a unified self‐normalized central limit theorem, based on which a unified inference is proposed without deciding whether the data are sparse or dense. The effectiveness of the proposed unified inference is demonstrated through a simulation study and an analysis of Baltimore MACS data.

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