Bayesian Adaptive Lasso for Regression Models with Nonignorable Missing Responses
Author(s) -
Yuanying Zhao,
Xingde Duan
Publication year - 2022
Publication title -
journal of mathematics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.252
H-Index - 13
eISSN - 2314-4785
pISSN - 2314-4629
DOI - 10.1155/2022/3168735
Subject(s) - missing data , lasso (programming language) , mathematics , gibbs sampling , statistics , bayesian probability , logistic regression , statistic , goodness of fit , regression analysis , regression , linear regression , econometrics , computer science , world wide web
The main purpose of this article is to develop a Bayesian adaptive lasso procedure for analyzing linear regression models with nonignorable missing responses, in which the missingness mechanism is specified by a logistic regression model. A sampling procedure combining the Gibbs sampler and Metropolis-Hastings algorithm is employed to obtain the Bayesian estimates of the regression coefficients, shrinkage coefficients, missingness mechanism models parameters, and their standard errors. We extend the partial posterior predictive p value for goodness-of-fit statistic to investigate the plausibility of the posited model. Finally, several simulation studies and the air pollution data example are undertaken to demonstrate the newly developed methodologies.
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