A Bayesian Latent Variable Selection Model for Nonignorable Missingness

Volume: 57, Issue: 2-3, Pages: 478 - 512
Published: Feb 2, 2021
Abstract
Missing data are exceedingly common across a variety of disciplines, such as educational, social, and behavioral science areas. Missing not at random (MNAR) mechanism where missingness is related to unobserved data is widespread in real data and has detrimental consequence. However, the existing MNAR-based methods have potential problems such as leaving the data incomplete and failing to accommodate incomplete covariates with interactions,...
Paper Details
Title
A Bayesian Latent Variable Selection Model for Nonignorable Missingness
Published Date
Feb 2, 2021
Volume
57
Issue
2-3
Pages
478 - 512
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