This thesis presents Bayesian solutions to inference problems for three types of social network data structures: a single observation of a social network, repeated observations on the same social network, and repeated observations on a social network developing through time. A social network is conceived as being a structure consisting of actors and their social interaction with each other. A common conceptualisation of social networks is to let the actors be represented by nodes in a graph with edges between pairs of nodes that are relationally tied to each other according to some definition. Statistical analysis of social networks is to a large extent concerned with modelling of these relational ties, which lends itself to empirical evalu...
We propose a family of statistical models for social network evolution over time, which represents a...
A class of statistical models is proposed for longitudinal network data. The dependent variable is t...
<p>Models with intractable likelihood functions arise in areas including network analysis and spatia...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
Interconnected network structures play a crucial role in many aspects of our lives. Understanding th...
Due to the proliferation of social networks and their significant effects on our day-to-day activiti...
This article provides an introductory summary to the formulation and application of exponential rand...
This article presents a simple and easily implementableBayesian approach to model and quantify uncer...
The present work is a collection of articles [133, 134, 135] that, in broad terms, are dedicated to...
This thesis explores three practically important problems related to social networks and proposes so...
A fully Bayesian analysis of directed graphs, with particular emphasis on applica- tions in social n...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
275 pagesThe main contributions of this thesis can be organized under two main themes: knowledge dis...
Interest in statistical network analysis has grown massively in recent decades and its perspective a...
We propose a family of statistical models for social network evolution over time, which represents a...
A class of statistical models is proposed for longitudinal network data. The dependent variable is t...
<p>Models with intractable likelihood functions arise in areas including network analysis and spatia...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
Interconnected network structures play a crucial role in many aspects of our lives. Understanding th...
Due to the proliferation of social networks and their significant effects on our day-to-day activiti...
This article provides an introductory summary to the formulation and application of exponential rand...
This article presents a simple and easily implementableBayesian approach to model and quantify uncer...
The present work is a collection of articles [133, 134, 135] that, in broad terms, are dedicated to...
This thesis explores three practically important problems related to social networks and proposes so...
A fully Bayesian analysis of directed graphs, with particular emphasis on applica- tions in social n...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
275 pagesThe main contributions of this thesis can be organized under two main themes: knowledge dis...
Interest in statistical network analysis has grown massively in recent decades and its perspective a...
We propose a family of statistical models for social network evolution over time, which represents a...
A class of statistical models is proposed for longitudinal network data. The dependent variable is t...
<p>Models with intractable likelihood functions arise in areas including network analysis and spatia...