Abstract: In this paper, we examine the problem of clustering massive graph streams. Graph clustering poses significant challenges because of the complex structures which may be present in the underlying data. The massive size of the underlying graph makes explicit structural enumeration very difficult. Consequently, most techniques for clustering multidimensional data are difficult to generalize to the case of massive graphs. Recently, methods have been proposed for clustering graph data, though these methods are designed for static data, and are not applicable to the case of graph streams. Furthermore, these techniques are especially not effective for the case of massive graphs, since a huge number of distinct edges may need to be tracked...
The challenge of monitoring massive amounts of data gen-erated by communication networks has led to ...
© Springer International Publishing AG 2017. Graph is a powerful tool to model interactions in dispa...
Graph clustering is an important technique to understand the relationships between the vertices in a...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
In this paper we propose a graph stream clustering algorithm with a unied similarity measure on both...
Graph clustering has received growing attention in recent years as an important analytical technique...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Algorithms based on simulating stochastic flows are a sim-ple and natural solution for the problem o...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
Poster presented at the 2012 Washington State University Academic Showcase.Identifying close-knit co...
Recent advances in data collecting devices and data storage systems are continuously offering cheape...
The challenge of monitoring massive amounts of data gen-erated by communication networks has led to ...
© Springer International Publishing AG 2017. Graph is a powerful tool to model interactions in dispa...
Graph clustering is an important technique to understand the relationships between the vertices in a...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
In this paper we propose a graph stream clustering algorithm with a unied similarity measure on both...
Graph clustering has received growing attention in recent years as an important analytical technique...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
Algorithms based on simulating stochastic flows are a sim-ple and natural solution for the problem o...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
Poster presented at the 2012 Washington State University Academic Showcase.Identifying close-knit co...
Recent advances in data collecting devices and data storage systems are continuously offering cheape...
The challenge of monitoring massive amounts of data gen-erated by communication networks has led to ...
© Springer International Publishing AG 2017. Graph is a powerful tool to model interactions in dispa...
Graph clustering is an important technique to understand the relationships between the vertices in a...