As empirical data collection and inference is often an imperfect process, and many systems can be represented as networks, it is important to develop modelling and analysis methods for imperfect network data. The main focus of this dissertation is the probabilistic network model G = (V, E, p) in which each edge is associated with an independent existence probability. This model can be used to represent both collected data and our understanding about it in many applications such as biological and social network analysis. A probabilistic network with m probabilistic edges corresponds to 2m deterministic instances, known as possible worlds, and most of the existing network analysis measures can be represented as probability distributions. This...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
Most queries on probabilistic networks assume a possible world semantic, which causes an exponential...
Abstract—Real-world network data is often very noisy and contains erroneous or missing edges. These ...
As empirical data collection and inference is often an imperfect process, and many systems can be re...
Modeling and analysis of imperfection in network data is essential in many applications such as prot...
Recent advances in computing and measurement technologies have led to an explosion in the amount of ...
A probabilistic network consists of a graphical representation (a directed graph) of the important v...
Interconnected network structures play a crucial role in many aspects of our lives. Understanding th...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
Abstract. Building a probabilistic network for a real-life application is a difficult and time-consu...
In this dissertation, we present research on several topics in networks including community detectio...
In this thesis, the computational complexity of a number of problems related to probabilistic networ...
Research on probabilistic models of networks now spans a wide variety of fields, including physics, ...
ments for the degree of Doctor of Science. A probabilistic graph is a linear graph in which both nod...
[[abstract]]Based on Newman's fast algorithm, in this paper we develop a general probabilistic frame...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
Most queries on probabilistic networks assume a possible world semantic, which causes an exponential...
Abstract—Real-world network data is often very noisy and contains erroneous or missing edges. These ...
As empirical data collection and inference is often an imperfect process, and many systems can be re...
Modeling and analysis of imperfection in network data is essential in many applications such as prot...
Recent advances in computing and measurement technologies have led to an explosion in the amount of ...
A probabilistic network consists of a graphical representation (a directed graph) of the important v...
Interconnected network structures play a crucial role in many aspects of our lives. Understanding th...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
Abstract. Building a probabilistic network for a real-life application is a difficult and time-consu...
In this dissertation, we present research on several topics in networks including community detectio...
In this thesis, the computational complexity of a number of problems related to probabilistic networ...
Research on probabilistic models of networks now spans a wide variety of fields, including physics, ...
ments for the degree of Doctor of Science. A probabilistic graph is a linear graph in which both nod...
[[abstract]]Based on Newman's fast algorithm, in this paper we develop a general probabilistic frame...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
Most queries on probabilistic networks assume a possible world semantic, which causes an exponential...
Abstract—Real-world network data is often very noisy and contains erroneous or missing edges. These ...