National audienceRecently, graph mining approaches have become very popular, especially in certain domains such as bioinformatics, chemoinformatics and social networks. One of the most challenging tasks is frequent subgraph discovery. This task has been highly motivated by the tremendously increasing size of existing graph databases. Due to this fact, there is an urgent need of efficient and scaling approaches for frequent subgraph discovery. In this paper, we propose a novel approach to approximate large-scale subgraph mining by means of a density-based partitioning technique, using the MapReduce framework. Our partitioning aims to balance computational load on a collection of machines. We experimentally show that our approach decreases si...
To overcome the challenges for managing the rapid growth of social graphs, massive Distributed Graph...
In molecular biology, it is often desirable to find common properties in large numbers of drug candi...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicati...
National audienceRecently, graph mining approaches have become very popular, especially in certain d...
Durant ces dernières années, l’utilisation de graphes a fait l’objet de nombreux travaux, notamment ...
Recently, graph mining approaches have become very popular, especially in certain domains such as bi...
The frequent patterns hidden in a graph can reveal crucial information about the network the graph r...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
In many recent applications, a graph is used to simulate many complex systems, such as social networ...
Structured data represented in the form of graphs arises in several fields of the science and the g...
Graph data has been so prevalent that efficiently obtaining useful information from them is highly d...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicati...
Abstract-Graphs are widely used in large scale social network analysis. Graph mining increasingly im...
Graphs are widely used in large scale social network analysis. Graph mining increasingly important i...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
To overcome the challenges for managing the rapid growth of social graphs, massive Distributed Graph...
In molecular biology, it is often desirable to find common properties in large numbers of drug candi...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicati...
National audienceRecently, graph mining approaches have become very popular, especially in certain d...
Durant ces dernières années, l’utilisation de graphes a fait l’objet de nombreux travaux, notamment ...
Recently, graph mining approaches have become very popular, especially in certain domains such as bi...
The frequent patterns hidden in a graph can reveal crucial information about the network the graph r...
Distributed System, plays a vital role in Frequent Subgraph Mining (FSM) to extract frequent subgrap...
In many recent applications, a graph is used to simulate many complex systems, such as social networ...
Structured data represented in the form of graphs arises in several fields of the science and the g...
Graph data has been so prevalent that efficiently obtaining useful information from them is highly d...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicati...
Abstract-Graphs are widely used in large scale social network analysis. Graph mining increasingly im...
Graphs are widely used in large scale social network analysis. Graph mining increasingly important i...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
To overcome the challenges for managing the rapid growth of social graphs, massive Distributed Graph...
In molecular biology, it is often desirable to find common properties in large numbers of drug candi...
Frequent pattern discovery in structured data is receiving an increasing attention in many applicati...