Over the past decade, network research has increased dramatically. Network data are used in many fields because they contain not only covariates of each observation, but also `relationships\u27 between observations. Therefore, statistical analysis of network data has been rapidly developed. However, network data presents many challenges, such as collecting network data, inferring the prevalence of an outcome of interest, and valid statistical testing typically with highly dependent data. The methods discussed in this thesis are developed to improve statistical inference from dependent network data
ln social network studies there is a growing demand for (practical) sampling designs. This demand st...
People do not live in isolation. Instead, we constantly interact with others, which affects our acti...
In this volume, we have seen several compelling reasons for the statistical analysis of network data...
Networks are collections of nodes, which can represent entities like people, genes, or brain regions...
2019 Fall.Includes bibliographical references.Network data, which consist of measured relations betw...
The number of network science applications across many different fields has been rapidly increasing....
One impediment to the statistical analysis of network data has been the difficulty in modeling the d...
Covers the foundations common to the statistical analysis of network data across the disciplines. Th...
The use of social network data has recently become increasingly prevalent in social science research...
We develop a statistical methodology to validate the result of network inference algorithms, based o...
The last decade has seen substantial advances in statistical techniques for the analysis of network ...
We develop a statistical methodology to validate the result of network inference algorithms, based o...
The challenges faced by official statistics in the 21st century are manifold. We are surrounded by s...
Dependency networks are a compelling alternative to Bayesian networks for learning joint probability...
Dependency networks are a compelling alternative to Bayesian networks for learning joint probability...
ln social network studies there is a growing demand for (practical) sampling designs. This demand st...
People do not live in isolation. Instead, we constantly interact with others, which affects our acti...
In this volume, we have seen several compelling reasons for the statistical analysis of network data...
Networks are collections of nodes, which can represent entities like people, genes, or brain regions...
2019 Fall.Includes bibliographical references.Network data, which consist of measured relations betw...
The number of network science applications across many different fields has been rapidly increasing....
One impediment to the statistical analysis of network data has been the difficulty in modeling the d...
Covers the foundations common to the statistical analysis of network data across the disciplines. Th...
The use of social network data has recently become increasingly prevalent in social science research...
We develop a statistical methodology to validate the result of network inference algorithms, based o...
The last decade has seen substantial advances in statistical techniques for the analysis of network ...
We develop a statistical methodology to validate the result of network inference algorithms, based o...
The challenges faced by official statistics in the 21st century are manifold. We are surrounded by s...
Dependency networks are a compelling alternative to Bayesian networks for learning joint probability...
Dependency networks are a compelling alternative to Bayesian networks for learning joint probability...
ln social network studies there is a growing demand for (practical) sampling designs. This demand st...
People do not live in isolation. Instead, we constantly interact with others, which affects our acti...
In this volume, we have seen several compelling reasons for the statistical analysis of network data...