Graph analysis uses graph data collected on a physical, biological, or social phenomena to shed light on the underlying dynamics and behavior of the agents in that system. Many fields contribute to this topic including graph theory, algorithms, statistics, machine learning, and linear algebra. This dissertation advances a novel framework for dynamic graph analysis that combines numerical, statistical, and streaming algorithms to provide deep understanding into evolving networks. For example, one can be interested in the changing influence structure over time. These disparate techniques each contribute a fragment to understanding the graph; however, their combination allows us to understand dynamic behavior and graph structure. Spectral part...
The work presented intersects three main areas, namely graph algorithmics, network science and appli...
The roots of graph theory lead back to the puzzle of Königsberg's bridges. In 1736 Leonhardt Euler p...
This thesis focuses on the study of various algorithms for Distributed Computing and Machine Learnin...
Graphs are commonly used for representing relations between entities and handling data processing in...
Graph analysis can be used to study streaming data from a variety of sources, such as social network...
Networks are ubiquitous in science, serving as a natural representation for many complex physical, b...
Graphs play a critical role in machine learning and data mining fields. The success of graph-based m...
abstract: Analysis of social networks has the potential to provide insights into wide range of appli...
There has been increasing interest in the study of networked systems such as biological, technologic...
Graphs, or networks, are mathematical structures to represent relations between elements. These syst...
Graphs are a powerful tool for the study of dynamic processes, where a set of interconnected entitie...
In this thesis we present four different works that solve problems in dynamic graph algorithms, sp...
Graph data represent information about entities (vertices) and the relationships or connections betw...
Explores regular structures in graphs and contingency tables by spectral theory and statistical meth...
Graphs (or networks) are now omnipresent, infusing into many aspects of society. This dissertation c...
The work presented intersects three main areas, namely graph algorithmics, network science and appli...
The roots of graph theory lead back to the puzzle of Königsberg's bridges. In 1736 Leonhardt Euler p...
This thesis focuses on the study of various algorithms for Distributed Computing and Machine Learnin...
Graphs are commonly used for representing relations between entities and handling data processing in...
Graph analysis can be used to study streaming data from a variety of sources, such as social network...
Networks are ubiquitous in science, serving as a natural representation for many complex physical, b...
Graphs play a critical role in machine learning and data mining fields. The success of graph-based m...
abstract: Analysis of social networks has the potential to provide insights into wide range of appli...
There has been increasing interest in the study of networked systems such as biological, technologic...
Graphs, or networks, are mathematical structures to represent relations between elements. These syst...
Graphs are a powerful tool for the study of dynamic processes, where a set of interconnected entitie...
In this thesis we present four different works that solve problems in dynamic graph algorithms, sp...
Graph data represent information about entities (vertices) and the relationships or connections betw...
Explores regular structures in graphs and contingency tables by spectral theory and statistical meth...
Graphs (or networks) are now omnipresent, infusing into many aspects of society. This dissertation c...
The work presented intersects three main areas, namely graph algorithmics, network science and appli...
The roots of graph theory lead back to the puzzle of Königsberg's bridges. In 1736 Leonhardt Euler p...
This thesis focuses on the study of various algorithms for Distributed Computing and Machine Learnin...