Today\u27s applications store large amounts of complex data that combine information of different types. Attributed graphs are an example for such a complex database where each object is characterized by its relationships to other objects and its individual properties. Specifically, each node in an attributed graph may be characterized by a large number of attributes. In this thesis, we present different approaches for mining such high dimensional attributed graphs
Graph clustering and graph outlier detection have been stud-ied extensively on plain graphs, with va...
Community detection is a fundamental and widely-studied problem that finds all densely-connected gro...
An attributed graph is a powerful tool for modeling a variety of information networks. It is not onl...
Attributed graphs are widely used for the representation of social networks, gene and protein intera...
abstract: Graph is a ubiquitous data structure, which appears in a broad range of real-world scenari...
Clustering a graph, i.e., assigning its nodes to groups, is an important operation whose best known ...
In complex networks analysis field, much effort has been focused on identifying graphs communities o...
International audienceFinding communities that are not only relatively densely connected in a graph ...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
Graph clustering, also known as community detection, is a long-standing problem in data mining. Howe...
Graph clustering, also known as community detection, is a long-standing problem in data mining. In r...
A lot of complex data in many scientific domains such as social networks, computational biology and ...
Data clustering, local pattern mining, and community detection in graphs are three mature areas of d...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...
Graph clustering and graph outlier detection have been stud-ied extensively on plain graphs, with va...
Community detection is a fundamental and widely-studied problem that finds all densely-connected gro...
An attributed graph is a powerful tool for modeling a variety of information networks. It is not onl...
Attributed graphs are widely used for the representation of social networks, gene and protein intera...
abstract: Graph is a ubiquitous data structure, which appears in a broad range of real-world scenari...
Clustering a graph, i.e., assigning its nodes to groups, is an important operation whose best known ...
In complex networks analysis field, much effort has been focused on identifying graphs communities o...
International audienceFinding communities that are not only relatively densely connected in a graph ...
International audienceClustering a graph, i.e., assigning its nodes to groups, is an important opera...
Graph clustering, also known as community detection, is a long-standing problem in data mining. Howe...
Graph clustering, also known as community detection, is a long-standing problem in data mining. In r...
A lot of complex data in many scientific domains such as social networks, computational biology and ...
Data clustering, local pattern mining, and community detection in graphs are three mature areas of d...
Networks have become a common data mining tool to encode relational definitions between a set of ent...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...
Graph clustering and graph outlier detection have been stud-ied extensively on plain graphs, with va...
Community detection is a fundamental and widely-studied problem that finds all densely-connected gro...
An attributed graph is a powerful tool for modeling a variety of information networks. It is not onl...