This paper provides further insight into the key concept of missing at random (MAR) in incomplete data analysis. Following the usual selection modelling approach we envisage two models with separable parameters: a model for the response of interest and a model for the missing data mechanism (MDM). If the response model is given by a complete density family, then frequentist inference from the likelihood function ignoring the MDM is valid if and only if the MDM is MAR. This necessary and sufficient condition also holds more generally for models for coarse data, such as censoring. Examples are given to show the necessity of the completeness of the underlying model for this equivalence to hold
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
Presented at the NCRN Meeting Spring 2016 in Washington DC on May 9-10, 2016; see http://www.ncrn.in...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
We review some issues related to the implications of different missing data mechanisms on statistica...
The classical missing at random (MAR) assumption, as defined by Rubin (Biometrika 63:581-592, 1976),...
Many standard statistical techniques require balanced data. However, missing data may arise by desig...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Abstract: When data are missing due to at most one cause from some time to next time, we can make sa...
International audienceSince the 90s, model-based clustering is largely used to classify data. Nowada...
This article describes a new approach to Bayesian selection of decomposabl e models with incomplete ...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...
Abstract: This paper discusses identification, estimation and testing in panel data models with attr...
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
Presented at the NCRN Meeting Spring 2016 in Washington DC on May 9-10, 2016; see http://www.ncrn.in...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
We review some issues related to the implications of different missing data mechanisms on statistica...
The classical missing at random (MAR) assumption, as defined by Rubin (Biometrika 63:581-592, 1976),...
Many standard statistical techniques require balanced data. However, missing data may arise by desig...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Abstract: When data are missing due to at most one cause from some time to next time, we can make sa...
International audienceSince the 90s, model-based clustering is largely used to classify data. Nowada...
This article describes a new approach to Bayesian selection of decomposabl e models with incomplete ...
It is shown that the classical taxonomy of missing data models, namely missing completely at random,...
Abstract: This paper discusses identification, estimation and testing in panel data models with attr...
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
Presented at the NCRN Meeting Spring 2016 in Washington DC on May 9-10, 2016; see http://www.ncrn.in...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...