Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal data. Such models are under-identified in the sense that, for any dropout pattern; the data provide no direct information on the-distribution of the unobserved outcomes, given the observed ones. One simple way of overcoming this problem, ordinary extrapolation of sufficiently simple pattern-specific-models, often produces rather unlikely descriptions; several authors consider identifying restrictions instead. Molenberghs et al. (1998) have constructed identifying restrictions corresponding to missing at random. In this paper, the family of restrictions where drop-out-does not depend on future, unobserved observations is identified. The ideas ...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Missing data and especially dropouts frequently arise in longitudinal data. Maximum likelihood estim...
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 ...
Pattern mixture models constitute an alternative to selection models (Little & Rubin, 1987). Little ...
When analyzing incomplete longitudinal data, several modelling frameworks can be consid-ered, as the...
Although most models for incomplete longitudinal data are formulated within the selection model fram...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Summary. In this paper we consider the problem of fitting pattern mixture models to longitudinal dat...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Modern analysis of incomplete longitudinal outcomes involves formulating assumptions about the missi...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Missing data and especially dropouts frequently arise in longitudinal data. Maximum likelihood estim...
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 ...
Pattern mixture models constitute an alternative to selection models (Little & Rubin, 1987). Little ...
When analyzing incomplete longitudinal data, several modelling frameworks can be consid-ered, as the...
Although most models for incomplete longitudinal data are formulated within the selection model fram...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Summary. In this paper we consider the problem of fitting pattern mixture models to longitudinal dat...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Modern analysis of incomplete longitudinal outcomes involves formulating assumptions about the missi...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Missing data and especially dropouts frequently arise in longitudinal data. Maximum likelihood estim...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...