We consider surveys with one or more callbacks and use a series of logistic regressions to model the probabilities of nonresponse at first contact and subsequent callbacks. These probabilities are allowed to depend on covariates as well as the categorical variable of interest and so the nonresponse mechanism is nonignorable. Explicit formulae for the score functions and information matrices are given for some important special cases to facilitate implementation of the method of scoring for obtaining maximum likelihood estimates of the model parameters. For estimating finite population quantities, we suggest the imputation and prediction approaches as alternatives to weighting adjustment. Simulation results suggest that the proposed methods ...
In this article we develop and apply new methods for handling not missing at random (NMAR) nonrespon...
Propensity score methodology has been applied in the analysis of survey data to account for differen...
Abstract: Weighting adjustment is a standard quasi-randomization approach for survey data subject to...
Sample surveys are an important source of information in the social sciences, and qualitative inform...
Abstract: This paper studies modeling of nonignorable nonresponse in panel surveys. A class of sequ...
When data are not missing at random, approaches to reduce nonresponse bias include subsampling nonre...
We consider non-response models for a single categorical response with categorical covariates whose ...
Graduation date: 2011When data are not missing at random, approaches to reduce nonresponse bias incl...
For categorical outcomes subject to nonignorable nonresponses, log-linear models may be used to adju...
Graduation date: 1979A common problem in postal surveys of human populations\ud arises when some of ...
Survey statisticians have been dealing with the issues of nonresponse in sample surveys for many yea...
The standard analysis of unit nonresponse in sample surveys is to assume missing at random| that is,...
Non-response introduces uncertainty in the results of most epidemiological surveys and it can bias t...
Non-response introduces uncertainty in the results of most epidemiological surveys and it can bias t...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
In this article we develop and apply new methods for handling not missing at random (NMAR) nonrespon...
Propensity score methodology has been applied in the analysis of survey data to account for differen...
Abstract: Weighting adjustment is a standard quasi-randomization approach for survey data subject to...
Sample surveys are an important source of information in the social sciences, and qualitative inform...
Abstract: This paper studies modeling of nonignorable nonresponse in panel surveys. A class of sequ...
When data are not missing at random, approaches to reduce nonresponse bias include subsampling nonre...
We consider non-response models for a single categorical response with categorical covariates whose ...
Graduation date: 2011When data are not missing at random, approaches to reduce nonresponse bias incl...
For categorical outcomes subject to nonignorable nonresponses, log-linear models may be used to adju...
Graduation date: 1979A common problem in postal surveys of human populations\ud arises when some of ...
Survey statisticians have been dealing with the issues of nonresponse in sample surveys for many yea...
The standard analysis of unit nonresponse in sample surveys is to assume missing at random| that is,...
Non-response introduces uncertainty in the results of most epidemiological surveys and it can bias t...
Non-response introduces uncertainty in the results of most epidemiological surveys and it can bias t...
In this thesis, we discuss calibration estimation in the presence of nonresponse with a focus on the...
In this article we develop and apply new methods for handling not missing at random (NMAR) nonrespon...
Propensity score methodology has been applied in the analysis of survey data to account for differen...
Abstract: Weighting adjustment is a standard quasi-randomization approach for survey data subject to...