Generalized linear mixed models with informative dropouts and missing covariates
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Publication:745314
DOI10.1007/S00184-006-0083-6zbMath1433.62203OpenAlexW1967488547MaRDI QIDQ745314
Publication date: 14 October 2015
Published in: Metrika (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1007/s00184-006-0083-6
Related Items (2)
On histogram-based regression and classification with incomplete data ⋮ A Dirichlet process mixture model for non-ignorable dropout
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