We investigate the possible bias due to an erroneous missing at random assumption if adjusted odds ratios are estimated from incomplete covariate data using the maximum likelihood principle. A relation between complete case estimates and maximum likelihood estimates allows us to identify situations where the bias vanishes. Numerical computations demonstrate that the bias is most serious if the degree of the violation of the missing at random assumption depends on the value of the outcome variable or of the observed covariate. Implications for the analysis of prospective and retrospective studies are given
Randomized experiments allow for consistent estimation of the average treatment effect based on the ...
Contains fulltext : 87570.pdf (publisher's version ) (Closed access)OBJECTIVE: Mis...
We derive estimates of expected cell counts for $I\times J\times K$ contingency tables where the str...
We investigate the possible bias due to an erroneous missing at random assumption if adjusted odds r...
We investigate the possible bias due to an erroneous missing at random assumption if adjusted odds r...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
Arminger and Sobel(1990) proposed an approach to estimate mean- and covariance structures in the pre...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Missing data are a commonly occurring threat to the validity and efficiency of epidemiologic studies...
Incomplete data often brings difficulty to estimations and inferences. A complete case (CC) analysis...
For regression with covariates missing not at random where the missingness depends on the missing co...
OBJECTIVES: To investigate whether a complete case logistic regression gives a biased estimate of th...
Incomplete data arises frequently in health research studies designed to investigate the causal rela...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
In this article, we consider the estimation of population mean when some observations on the study ...
Randomized experiments allow for consistent estimation of the average treatment effect based on the ...
Contains fulltext : 87570.pdf (publisher's version ) (Closed access)OBJECTIVE: Mis...
We derive estimates of expected cell counts for $I\times J\times K$ contingency tables where the str...
We investigate the possible bias due to an erroneous missing at random assumption if adjusted odds r...
We investigate the possible bias due to an erroneous missing at random assumption if adjusted odds r...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
Arminger and Sobel(1990) proposed an approach to estimate mean- and covariance structures in the pre...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
Missing data are a commonly occurring threat to the validity and efficiency of epidemiologic studies...
Incomplete data often brings difficulty to estimations and inferences. A complete case (CC) analysis...
For regression with covariates missing not at random where the missingness depends on the missing co...
OBJECTIVES: To investigate whether a complete case logistic regression gives a biased estimate of th...
Incomplete data arises frequently in health research studies designed to investigate the causal rela...
Missing values in covariates of regression models are a pervasive problem in empirical research. Pop...
In this article, we consider the estimation of population mean when some observations on the study ...
Randomized experiments allow for consistent estimation of the average treatment effect based on the ...
Contains fulltext : 87570.pdf (publisher's version ) (Closed access)OBJECTIVE: Mis...
We derive estimates of expected cell counts for $I\times J\times K$ contingency tables where the str...