A pattern-mixture odds ratio model for incomplete categorical data
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Publication:4935318
DOI10.1080/03610929908832453zbMath1156.62381OpenAlexW2024846937MaRDI QIDQ4935318
Geert Molenberghs, Bart Michiels, Stuart R. Lipsitz
Publication date: 31 January 2000
Published in: Communications in Statistics - Theory and Methods (Search for Journal in Brave)
Full work available at URL: https://doi.org/10.1080/03610929908832453
Applications of statistics to biology and medical sciences; meta analysis (62P10) Applications of statistics (62P99)
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Pattern-mixture models for categorical outcomes with non-monotone missingness, A Pattern-Mixture Model for Longitudinal Binary Responses with Nonignorable Nonresponse, Marginalizing pattern-mixture models for categorical data subject to monotone missingness, A Hybrid Model for Nonignorable Dropout in Longitudinal Binary Responses, Test of independence in a \(2\times 2\) contingency table with nonignorable nonresponse via constrained EM algorithm
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