Data in the social, behavioural and health sciences frequently come from observational studies instead of controlled experiments. In addition to random errors, observational data typically contain additional sources of uncertainty such as missing values, unmeasured confounders and selection biases. Also, the research question is often different from that which a particular source of data was designed to answer, and so not all relevant variables are measured. As a result, multiple sources of data are often necessary to identify the biases and to inform about different aspects of the research question. Bayesian graphical models provide a coherent way to connect a series of local submodels, based on different data sets, into a global unified a...
Mathematical models are powerful tools for epidemiology and can be used to compare con-trol actions....
Combining information from multiple surveys can improve the quality of small area estimates.Customar...
When a dataset is imbalanced, the prediction of the scarcely-sampled subpopulation can be over-influ...
Routinely collected administrative data sets, such as national registers, aim to collect information...
Selection bias is a massive problem in infectious disease epidemiology that can result in needless m...
Model selection is an integral, yet contentious, component of epidemiologic research. Unfortunately,...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
Model selection is an integral, yet contentious, component of epidemiologic research. Unfortunately,...
The variability of disease occurrence among populations is generally higher than that within popula...
<div><p>Mathematical models are powerful tools for epidemiology and can be used to compare control a...
Mathematical models are powerful tools for epidemiology and can be used to compare control actions. ...
The link between pollution and health is commonly explored by trying to identify the dominant cause ...
The goal of my thesis is to make contributions on some statistical issues related to epidemiological...
2022 Spring.Includes bibliographical references.Air pollution exposure has been linked to increased ...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Mathematical models are powerful tools for epidemiology and can be used to compare con-trol actions....
Combining information from multiple surveys can improve the quality of small area estimates.Customar...
When a dataset is imbalanced, the prediction of the scarcely-sampled subpopulation can be over-influ...
Routinely collected administrative data sets, such as national registers, aim to collect information...
Selection bias is a massive problem in infectious disease epidemiology that can result in needless m...
Model selection is an integral, yet contentious, component of epidemiologic research. Unfortunately,...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
Model selection is an integral, yet contentious, component of epidemiologic research. Unfortunately,...
The variability of disease occurrence among populations is generally higher than that within popula...
<div><p>Mathematical models are powerful tools for epidemiology and can be used to compare control a...
Mathematical models are powerful tools for epidemiology and can be used to compare control actions. ...
The link between pollution and health is commonly explored by trying to identify the dominant cause ...
The goal of my thesis is to make contributions on some statistical issues related to epidemiological...
2022 Spring.Includes bibliographical references.Air pollution exposure has been linked to increased ...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Mathematical models are powerful tools for epidemiology and can be used to compare con-trol actions....
Combining information from multiple surveys can improve the quality of small area estimates.Customar...
When a dataset is imbalanced, the prediction of the scarcely-sampled subpopulation can be over-influ...