International audienceCommunity detection in graphs, data clustering, and local pattern mining are three mature fields of data mining and machine learning. In recent years, attributed subgraph mining is emerging as a new powerful data mining task in the intersection of these areas. Given a graph and a set of attributes for each vertex, attributed subgraph mining aims to find cohesive subgraphs for which (a subset of) the attribute values has exceptional values in some sense. While research on this task can borrow from the three abovementioned fields, the principled integration of graph and attribute data poses two challenges: the definition of a pattern language that is intuitive and lends itself to efficient search strategies, and the form...
In the real world, various systems can be modeled using entity-relationship graphs. Given such a gra...
International audienceAttributed directed graphs are directed graphs in which nodes are associated w...
Discovering patterns in graphs has long been an area of interest. In most contemporary approaches to...
Community detection in graphs, data clustering, and local pattern mining are three mature fields of ...
Data clustering, local pattern mining, and community detection in graphs are three mature areas of d...
© 2016, The Author(s). The utility of a dense subgraph in gaining a better understanding of a graph ...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...
The connectivity structure of graphs is typically related to the attributes of the vertices. In soci...
The connectivity structure of graphs is typically related to the attributes of the nodes. In social ...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Due to the availability of rich network data, graph mining techniques have been improved to handle t...
International audienceFinding communities that are not only relatively densely connected in a graph ...
International audienceMany relational data result from the aggregation of several individual behavio...
Data mining aims to discover knowledge in large databases. The desired knowledge, normally represent...
International audienceMany applications see huge demands for discovering relevant patterns in dynam...
In the real world, various systems can be modeled using entity-relationship graphs. Given such a gra...
International audienceAttributed directed graphs are directed graphs in which nodes are associated w...
Discovering patterns in graphs has long been an area of interest. In most contemporary approaches to...
Community detection in graphs, data clustering, and local pattern mining are three mature fields of ...
Data clustering, local pattern mining, and community detection in graphs are three mature areas of d...
© 2016, The Author(s). The utility of a dense subgraph in gaining a better understanding of a graph ...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...
The connectivity structure of graphs is typically related to the attributes of the vertices. In soci...
The connectivity structure of graphs is typically related to the attributes of the nodes. In social ...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Due to the availability of rich network data, graph mining techniques have been improved to handle t...
International audienceFinding communities that are not only relatively densely connected in a graph ...
International audienceMany relational data result from the aggregation of several individual behavio...
Data mining aims to discover knowledge in large databases. The desired knowledge, normally represent...
International audienceMany applications see huge demands for discovering relevant patterns in dynam...
In the real world, various systems can be modeled using entity-relationship graphs. Given such a gra...
International audienceAttributed directed graphs are directed graphs in which nodes are associated w...
Discovering patterns in graphs has long been an area of interest. In most contemporary approaches to...