Data used in social, behavioural, health or biological sciences may have a hierarchical structure due to the population of interest or the sampling design. Multilevel or marginal models are often used to analyse such hierarchical data. These data are often selected with unequal probabilities from a clustered and stratified population. An empirical likelihood approach for the regression parameters of a multilevel model is proposed. It has the advantage of taking into account of the sampling design. This approach can be used for point estimation, hypothesis testing and confidence intervals for the sub-vector of parameters. It provides asymptotically valid inference for small and large sampling fractions. The simulation study shows the advanta...
In large-scale assessments like Programme for International Students Assessment (PISA) and the Trend...
This thesis includes three papers. The first paper demonstrates how to estimate variance of change i...
Complex surveys based on multistage design are commonly used to collect large population data. Strat...
Data used in social, behavioural, health or biological sciences may have a hierarchical structure du...
Data used in social, behavioural, health or biological sciences may have a hierarchical structure du...
Confidence intervals based on ordinary least squares may have poor coverages for regression paramete...
We describe a multivariate, multilevel, pseudo maxi-mum likelihood estimation method for multistage ...
There are two different empirical likelihood approaches for complex sampling designs: “pseudoempiric...
Multilevel complex survey data are obtained from study designs that involve multiple stages of sampl...
The Hartley-Rao-Cochran (RHC) sampling design (Rao et al., 1962) is a popular unequal probability sa...
Sampling designs of large-scale, federally funded studies are typically complex, involving multiple ...
Sampling designs of large-scale, federally funded studies are typically complex, involving multiple ...
Large-scale assessment survey (LSAS) data are collected via complex sampling designs with special fe...
The parameter of interest considered is the unique solution to a set of estimating equations, such a...
There are two different empirical likelihood approaches for complex sampling designs: the “pseudo-em...
In large-scale assessments like Programme for International Students Assessment (PISA) and the Trend...
This thesis includes three papers. The first paper demonstrates how to estimate variance of change i...
Complex surveys based on multistage design are commonly used to collect large population data. Strat...
Data used in social, behavioural, health or biological sciences may have a hierarchical structure du...
Data used in social, behavioural, health or biological sciences may have a hierarchical structure du...
Confidence intervals based on ordinary least squares may have poor coverages for regression paramete...
We describe a multivariate, multilevel, pseudo maxi-mum likelihood estimation method for multistage ...
There are two different empirical likelihood approaches for complex sampling designs: “pseudoempiric...
Multilevel complex survey data are obtained from study designs that involve multiple stages of sampl...
The Hartley-Rao-Cochran (RHC) sampling design (Rao et al., 1962) is a popular unequal probability sa...
Sampling designs of large-scale, federally funded studies are typically complex, involving multiple ...
Sampling designs of large-scale, federally funded studies are typically complex, involving multiple ...
Large-scale assessment survey (LSAS) data are collected via complex sampling designs with special fe...
The parameter of interest considered is the unique solution to a set of estimating equations, such a...
There are two different empirical likelihood approaches for complex sampling designs: the “pseudo-em...
In large-scale assessments like Programme for International Students Assessment (PISA) and the Trend...
This thesis includes three papers. The first paper demonstrates how to estimate variance of change i...
Complex surveys based on multistage design are commonly used to collect large population data. Strat...