When dealing with incomplete data in statistical learning, or incomplete observations in probabilistic inference, one needs to distinguish the fact that a certain event is observed from the fact that the observed event has happened. Since the modeling and computational complexities entailed by maintaining this proper distinction are often prohibitive, one asks for conditions under which it can be safely ignored. Such conditions are given by the missing at random (mar) and coarsened at random (car) assumptions. In this paper we provide an in-depth analysis of several questions relating to mar/car assumptions. Main purpose of our study is to provide criteria by which one may evaluate whether a car assumption is reasonable for a particular dat...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
As examples such as the Monty Hall puzzle show, applying conditioning to update a probability distri...
When data are missing at random, the missing-data mechanism can be ignored but this assumption is no...
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...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
We study the problem of ignorability in likelihood-based inference from incomplete categorical data....
The classical missing at random (MAR) assumption, as defined by Rubin (Biometrika 63:581-592, 1976),...
In recent years a popular nonparametric model for coarsened data is an assumption on the coarsening ...
The notion of coarsening at random CAR was introduced by Heitjan and Rubin to describe the most gen...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...
Abstract: When data are missing due to at most one cause from some time to next time, we can make sa...
We review some issues related to the implications of different missing data mechanisms on statistica...
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
This paper addresses the following question: how should we update our beliefs after observing some i...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
As examples such as the Monty Hall puzzle show, applying conditioning to update a probability distri...
When data are missing at random, the missing-data mechanism can be ignored but this assumption is no...
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...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
We study the problem of ignorability in likelihood-based inference from incomplete categorical data....
The classical missing at random (MAR) assumption, as defined by Rubin (Biometrika 63:581-592, 1976),...
In recent years a popular nonparametric model for coarsened data is an assumption on the coarsening ...
The notion of coarsening at random CAR was introduced by Heitjan and Rubin to describe the most gen...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...
Abstract: When data are missing due to at most one cause from some time to next time, we can make sa...
We review some issues related to the implications of different missing data mechanisms on statistica...
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
This paper addresses the following question: how should we update our beliefs after observing some i...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
As examples such as the Monty Hall puzzle show, applying conditioning to update a probability distri...
When data are missing at random, the missing-data mechanism can be ignored but this assumption is no...