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Penalized generalized estimating equations approach to longitudinal data with multinomial responses

Title
Penalized generalized estimating equations approach to longitudinal data with multinomial responses
Authors
Kamruzzaman M.Kwon O.Park T.
Ewha Authors
권오란
SCOPUS Author ID
권오란scopus
Issue Date
2021
Journal Title
Journal of the Korean Statistical Society
ISSN
1226-3192JCR Link
Citation
Journal of the Korean Statistical Society vol. 50, no. 3, pp. 844 - 859
Keywords
High-dimensional dataLongitudinal dataMinimax Concave PenaltyMinorization-maximization algorithmMultinomial responseSmoothly Clipped Absolute Deviation penaltyVariable selection
Publisher
Springer
Indexed
SCIE; SCOPUS; KCI scopus
Document Type
Article
Abstract
In high-dimensional longitudinal data with multinomial response, the number of covariates is always much larger than the number of subjects and when modelling such data, variable selection is always an important issue. In this study, we developed the penalized generalized estimating equation for multinomial responses for identifying important variables and estimation of their regression coefficients simultaneously. An iterative algorithm is used to solve the penalized estimating equation by combining the Fisher-scoring algorithm and minorization-maximization algorithm. We used a penalty term to regularize the slope part only because category-specific intercept terms should be included in the multinomial model. We conducted a simulation study to investigate the performance of the proposed method and demonstrated its performance using real dataset. © 2021, Korean Statistical Society.
DOI
10.1007/s42952-021-00134-4
Appears in Collections:
신산업융합대학 > 식품영양학과 > Journal papers
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