Although most models for incomplete longitudinal data are formulated within the selection model framework, pattern-mixture models have gained considerable interest in recent years [R.J.A. Little, Pattern-mixture models for multivariate incomplete data, J. Am. Stat. Assoc. 88 (1993), pp. 125-134; R.J.A. Lrittle, A class of pattern-mixture models for normal incomplete data, Biometrika 81 (1994), pp. 471-483], since it is often argued that selection models, although many are identifiable, should be approached with caution, especially in the context of MNAR models [R.J. Glynn, N.M. Laird, and D.B. Rubin, Selection modeling versus mixture modeling with nonignorable nonresponse, in Drawing Inferences from Self-selected Samples, H. Wainer, ed., Sp...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Modern analysis of incomplete longitudinal outcomes involves formulating assumptions about the missi...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
When analyzing incomplete longitudinal data, several modelling frameworks can be consid-ered, as the...
Many models to analyze incomplete data that allow the missingness to be non-random have been develop...
In the analyses of incomplete longitudinal clinical trial data, there has been a shift, away from si...
Pattern mixture models constitute an alternative to selection models (Little & Rubin, 1987). Little ...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Incomplete series of data is a common feature in quality-of-life studies, in particular in chronic d...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Modern analysis of incomplete longitudinal outcomes involves formulating assumptions about the missi...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
When analyzing incomplete longitudinal data, several modelling frameworks can be consid-ered, as the...
Many models to analyze incomplete data that allow the missingness to be non-random have been develop...
In the analyses of incomplete longitudinal clinical trial data, there has been a shift, away from si...
Pattern mixture models constitute an alternative to selection models (Little & Rubin, 1987). Little ...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Incomplete series of data is a common feature in quality-of-life studies, in particular in chronic d...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Modern analysis of incomplete longitudinal outcomes involves formulating assumptions about the missi...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...