Large real-world graph (a.k.a network, relational) data are omnipresent, in online media, businesses, science, and the government. Analysis of these massive graphs is crucial, in order to extract descriptive and predictive knowledge with many commercial, medical, and environmental applications. In addition to its general structure, knowing what stands out, i.e. anomalous or novel, in the data is often at least, or even more important and interesting. In this thesis, we build novel algorithms and tools for mining and modeling large-scale graphs, with a focus on: (1) Graph pattern mining: we discover surprising patterns that hold across diverse real-world graphs, such as the “fortification effect ” (e.g. the more donors a candidate has, the s...
Introduction to graphs and networks Graphs: a simple model • entities – set of vertices • pairwise r...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
How do we find patterns and anomalies, on graphs with billions of nodes and edges, which do not fit ...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
Knowledge discovery from disparate data sources can be very useful for gaining a better understandin...
What does the Web look like? How can we find patterns, communities, outliers, in a social network? W...
Network data (also referred to as relational data, social network data, real graph data) has become ...
Network analysis and graph mining play a prominent role in providing insights and studying phenomena...
Large real-world graphs often show interesting properties, such as power-law degree distributions an...
How does the Web look? How could we tell an abnormal social network from a normal one? These and sim...
Christos Faloutsos of Carnegie Mellon University presented a lecture on April 8, 2011 from 2:00 pm -...
International audienceBig graph mining is an important research area and it has at-tracted considera...
RESEARCH INTERESTS My research is in the fields of data mining and knowledge discovery, applied mach...
How does a ‘normal ’ computer (or social) network look like? How can we spot ‘abnormal ’ sub-network...
Networked systems are everywhere - such as the Internet, social networks, biological networks, trans...
Introduction to graphs and networks Graphs: a simple model • entities – set of vertices • pairwise r...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
How do we find patterns and anomalies, on graphs with billions of nodes and edges, which do not fit ...
Graphs naturally represent information in a wide range of disciplines, from social science to biolog...
Knowledge discovery from disparate data sources can be very useful for gaining a better understandin...
What does the Web look like? How can we find patterns, communities, outliers, in a social network? W...
Network data (also referred to as relational data, social network data, real graph data) has become ...
Network analysis and graph mining play a prominent role in providing insights and studying phenomena...
Large real-world graphs often show interesting properties, such as power-law degree distributions an...
How does the Web look? How could we tell an abnormal social network from a normal one? These and sim...
Christos Faloutsos of Carnegie Mellon University presented a lecture on April 8, 2011 from 2:00 pm -...
International audienceBig graph mining is an important research area and it has at-tracted considera...
RESEARCH INTERESTS My research is in the fields of data mining and knowledge discovery, applied mach...
How does a ‘normal ’ computer (or social) network look like? How can we spot ‘abnormal ’ sub-network...
Networked systems are everywhere - such as the Internet, social networks, biological networks, trans...
Introduction to graphs and networks Graphs: a simple model • entities – set of vertices • pairwise r...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
How do we find patterns and anomalies, on graphs with billions of nodes and edges, which do not fit ...