Discovering patterns in graphs has long been an area of interest. In most approaches to such pattern discovery either quantitative anomalies, frequency of substructure or maximum flow is used to measure the interestingness of a pattern. In this paper we introduce heuristics that guide a subgraph discovery algorithm away from banal paths towards more informative ones. Given an RDF graph a user might pose a question of the form: What are the most relevant ways in which entity X is related to entity Y? the response to which is a subgraph connecting X to Y. We use our heuristics to discover informative subgraphs within RDF graphs. Our heuristics are based on weighting mechanisms derived from edge semantics suggested by the RDF schema. We pr...
The discovery of surprising relations in large, heterogeneous information repositories is gaining in...
An increasing number of applications are modeled and analyzed in network form, where nodes represent...
International audienceCommunity detection in graphs, data clustering, and local pattern mining are t...
Discovering patterns in graphs has long been an area of interest. In most approaches to such pattern...
Discovering patterns in graphs has long been an area of interest. In most approaches to such pattern...
Discovering patterns in graphs has long been an area of interest. In most contemporary approaches to...
Graph mining to extract interesting components has been studied in various guises, e.g., communities...
Abstract—In the real world, various systems can be mod-eled using heterogeneous networks which consi...
The connectivity structure of graphs is typically related to the attributes of the nodes. In social ...
The connectivity structure of graphs is typically related to the attributes of the vertices. In soci...
The entity relatedness problem refers to the question of exploring a knowledge base, represented as ...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
The utility of a dense subgraph in gaining a better understanding of a graph has been formalised in ...
Consider a large graph or network, and a user-provided set of query vertices between which the user ...
International audienceGraphs, and notably RDF graphs, are a prominent way of sharing data. As data u...
The discovery of surprising relations in large, heterogeneous information repositories is gaining in...
An increasing number of applications are modeled and analyzed in network form, where nodes represent...
International audienceCommunity detection in graphs, data clustering, and local pattern mining are t...
Discovering patterns in graphs has long been an area of interest. In most approaches to such pattern...
Discovering patterns in graphs has long been an area of interest. In most approaches to such pattern...
Discovering patterns in graphs has long been an area of interest. In most contemporary approaches to...
Graph mining to extract interesting components has been studied in various guises, e.g., communities...
Abstract—In the real world, various systems can be mod-eled using heterogeneous networks which consi...
The connectivity structure of graphs is typically related to the attributes of the nodes. In social ...
The connectivity structure of graphs is typically related to the attributes of the vertices. In soci...
The entity relatedness problem refers to the question of exploring a knowledge base, represented as ...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
The utility of a dense subgraph in gaining a better understanding of a graph has been formalised in ...
Consider a large graph or network, and a user-provided set of query vertices between which the user ...
International audienceGraphs, and notably RDF graphs, are a prominent way of sharing data. As data u...
The discovery of surprising relations in large, heterogeneous information repositories is gaining in...
An increasing number of applications are modeled and analyzed in network form, where nodes represent...
International audienceCommunity detection in graphs, data clustering, and local pattern mining are t...