Abstract. The general principles of Bayesian data analysis imply that mod-els for survey responses should be constructed conditional on all variables that affect the probability of inclusion and nonresponse, which are also the variables used in survey weighting and clustering. However, such models can quickly become very complicated, with potentially thousands of poststratifi-cation cells. It is then a challenge to develop general families of multilevel probability models that yield reasonable Bayesian inferences. We discuss in the context of several ongoing public health and social surveys. This work is currently open-ended, and we conclude with thoughts on how research could proceed to solve these problems
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
Despite the prominent use of complex survey data and the growing popularity of machine learning meth...
<p>Surveys can collect important data that inform policy decisions and drive social science research...
The general principles of Bayesian data analysis imply that models for survey responses should be co...
Multilevel complex survey data are obtained from study designs that involve multiple stages of sampl...
© 2020 Marnie Leanne DownesRecruiting a representative sample of participants is becoming increasing...
Data from large surveys are often supplemented with sampling weights that are designed to reflect un...
Survey weighting adjusts for known or expected differences between sample and population. Weights ar...
Inference for survey data needs to take account of the survey design. Failing to consider the survey...
Several large surveys administered by the Census allow responses in several di#erent modes (mail, te...
In the design of surveys, a number of input parameters such as contact propensities, participation p...
In this dissertation I provide new theory and methodology to address three important problems in sam...
Cancer surveillance research requires accurate estimates of cancer risk prevalence for small areas s...
A fundamental technique in survey sampling is to weight included units by the inverse of their proba...
In behavioral, health, and social sciences, any endeavor involving measurement is directed at accura...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
Despite the prominent use of complex survey data and the growing popularity of machine learning meth...
<p>Surveys can collect important data that inform policy decisions and drive social science research...
The general principles of Bayesian data analysis imply that models for survey responses should be co...
Multilevel complex survey data are obtained from study designs that involve multiple stages of sampl...
© 2020 Marnie Leanne DownesRecruiting a representative sample of participants is becoming increasing...
Data from large surveys are often supplemented with sampling weights that are designed to reflect un...
Survey weighting adjusts for known or expected differences between sample and population. Weights ar...
Inference for survey data needs to take account of the survey design. Failing to consider the survey...
Several large surveys administered by the Census allow responses in several di#erent modes (mail, te...
In the design of surveys, a number of input parameters such as contact propensities, participation p...
In this dissertation I provide new theory and methodology to address three important problems in sam...
Cancer surveillance research requires accurate estimates of cancer risk prevalence for small areas s...
A fundamental technique in survey sampling is to weight included units by the inverse of their proba...
In behavioral, health, and social sciences, any endeavor involving measurement is directed at accura...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
Despite the prominent use of complex survey data and the growing popularity of machine learning meth...
<p>Surveys can collect important data that inform policy decisions and drive social science research...