This paper proposes a test for missing at random (MAR). The MAR assumption is shown to be testable given instrumental variables which are independent of response given potential outcomes. A nonparametric testing procedure based on integrated squared distance is proposed. The statistic’s asymptotic distribution under the MAR hypothesis is derived. In particular, our results can be applied to testing missing completely at random (MCAR). A Monte Carlo study examines finite sample performance of our test statistic. An empirical illustration analyzes the nonresponse mechanism in labor income questions
This paper develops methods for assessing the sensitivity of empirical conclusions regarding conditi...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Current practice in survey arena handles attrition in longitudinal surveys assuming that the data is...
This paper proposes a test for missing at random (MAR). The MAR assumption is shown to be testable g...
This paper proposes a test for missing at random (MAR). TheMARassumption is shown to be testable gi...
Many methods exist for imputing missing data but fewer methods have been proposed to test the missin...
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
Given a set of incomplete observations, we study the nonparametric problem of testing whether data a...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
For an estimation with missing data, a crucial step is to determine if the data are missing complete...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
In missing-data analysis, Little’s test (1988, Journal of the American Statistical Association 83: 1...
We consider the problem of missing data when the mechanism of missingness is not at random and when ...
Missing data are an important issue in the social sciences. Knowing about the type of missing data i...
This paper develops methods for assessing the sensitivity of empirical conclusions regarding conditi...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Current practice in survey arena handles attrition in longitudinal surveys assuming that the data is...
This paper proposes a test for missing at random (MAR). The MAR assumption is shown to be testable g...
This paper proposes a test for missing at random (MAR). TheMARassumption is shown to be testable gi...
Many methods exist for imputing missing data but fewer methods have been proposed to test the missin...
The otherwise straightforward analysis of randomized experiments is often complicated by the presenc...
Given a set of incomplete observations, we study the nonparametric problem of testing whether data a...
Most approaches to learning from incomplete data are based on the assumptionthat unobserved values a...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
For an estimation with missing data, a crucial step is to determine if the data are missing complete...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
In missing-data analysis, Little’s test (1988, Journal of the American Statistical Association 83: 1...
We consider the problem of missing data when the mechanism of missingness is not at random and when ...
Missing data are an important issue in the social sciences. Knowing about the type of missing data i...
This paper develops methods for assessing the sensitivity of empirical conclusions regarding conditi...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
Current practice in survey arena handles attrition in longitudinal surveys assuming that the data is...