How can we fully structure a graph into pieces of meaningful information? Into structures that provide us with insights and carry a meaning beyond simple clustering. How can we also exploit these patterns to compress the graph for fast transmission and easier storage? In many applications of graph analysis like network analysis or medical information extraction we are searching for special patterns. Here, it is not sufficient to extract only parts of the relevant information in a graph, but to understand the complete underlying structure. Therefore, we propose our algorithm MeGS (Partitioning Meaningful Subgraph Structures using Minimum Description Length) to fully understand how a graph is constructed. The most common primitives (clique, h...
Abstract. The most commonly used method to tackle the graph partitioning problem in practice is the ...
Abstract—We present a novel approach to graph partitioning based on the notion of natural cuts. Our ...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...
How can we retrieve information from sparse graphs? Traditional graph mining approaches focus on dis...
To compress a graph, some methods rely on finding highly compressible structures, such as very dense...
Abstract Massive graphs are ubiquitous and at the heart of many real-world problems and applications...
This work is motivated by the necessity to automate the discovery of structure in vast and evergrowi...
How can we succinctly describe a million-node graph with a few simple sentences? How can we measure ...
How can we succinctly describe a million-node graph with a few simple sentences? How can we measure ...
Can we use machine learning to compress graph data? The absence of ordering in graphs poses a signif...
International audienceGraph pattern mining algorithms ease graph data analysis by extracting recurri...
An important application of graph partitioning is data clustering using a,graph model- the pairwise ...
This article describes two evolutionary methods for dividing a graph into densely connected structur...
Abstract—In this paper, we present a novel partition framework, called dense subgraph partition (DSP...
Nowadays, large quantities of graph data can be found in many fields, encoding information about the...
Abstract. The most commonly used method to tackle the graph partitioning problem in practice is the ...
Abstract—We present a novel approach to graph partitioning based on the notion of natural cuts. Our ...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...
How can we retrieve information from sparse graphs? Traditional graph mining approaches focus on dis...
To compress a graph, some methods rely on finding highly compressible structures, such as very dense...
Abstract Massive graphs are ubiquitous and at the heart of many real-world problems and applications...
This work is motivated by the necessity to automate the discovery of structure in vast and evergrowi...
How can we succinctly describe a million-node graph with a few simple sentences? How can we measure ...
How can we succinctly describe a million-node graph with a few simple sentences? How can we measure ...
Can we use machine learning to compress graph data? The absence of ordering in graphs poses a signif...
International audienceGraph pattern mining algorithms ease graph data analysis by extracting recurri...
An important application of graph partitioning is data clustering using a,graph model- the pairwise ...
This article describes two evolutionary methods for dividing a graph into densely connected structur...
Abstract—In this paper, we present a novel partition framework, called dense subgraph partition (DSP...
Nowadays, large quantities of graph data can be found in many fields, encoding information about the...
Abstract. The most commonly used method to tackle the graph partitioning problem in practice is the ...
Abstract—We present a novel approach to graph partitioning based on the notion of natural cuts. Our ...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...