Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the influence of a vertex in a graph. The BC score of a vertex is proportional to the number of all-pairs-shortest-paths passing through it. However, complete and exact BC computation for a large-scale graph is an extraordinary challenge that requires high performance computing techniques to provide results in a reasonable amount of time. Our approach combines bi-dimensional (2-D) decomposition of the graph and multi-level parallelism together with a suitable data-thread mapping that overcomes most of the difficulties caused by the irregularity of the computation on GPUs. In order to reduce time and space requirements of BC computation, a heuristics based on 1-deg...
Analysis of networks is quite interesting, because they can be interpreted for several purposes. Var...
We present a new lock-free parallel algorithm for computing betweenness centralityof massive small-w...
The stagnant performance of single core processors, increasing size of data sets, and variety of str...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Betweenness Centrality (BC) is a widely used metric of the relevance of a node in a network. The fas...
Betweenness Centrality (BC) is a widely used metric of the relevance of a node in a network. The fas...
Abstract—Graphs that model social networks, numerical sim-ulations, and the structure of the Interne...
<div> <div> <p>We develop an efficient parallel GPU-based approach to boost the calculation of betwe...
Betweenness centrality (BC) is a crucial graph problem that measures the significance of a vertex by...
Abstract—Betweenness Centrality is a widely used graph analytic that has applications such as findin...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Nowadays, graph analytics are widely used in many research fields and applications. One important an...
We present a new lock-free parallel algorithm for computing betweenness centrality of massive small-...
Analysis of networks is quite interesting, because they can be interpreted for several purposes. Var...
We present a new lock-free parallel algorithm for computing betweenness centralityof massive small-w...
The stagnant performance of single core processors, increasing size of data sets, and variety of str...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Betweenness Centrality (BC) is a widely used metric of the relevance of a node in a network. The fas...
Betweenness Centrality (BC) is a widely used metric of the relevance of a node in a network. The fas...
Abstract—Graphs that model social networks, numerical sim-ulations, and the structure of the Interne...
<div> <div> <p>We develop an efficient parallel GPU-based approach to boost the calculation of betwe...
Betweenness centrality (BC) is a crucial graph problem that measures the significance of a vertex by...
Abstract—Betweenness Centrality is a widely used graph analytic that has applications such as findin...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Nowadays, graph analytics are widely used in many research fields and applications. One important an...
We present a new lock-free parallel algorithm for computing betweenness centrality of massive small-...
Analysis of networks is quite interesting, because they can be interpreted for several purposes. Var...
We present a new lock-free parallel algorithm for computing betweenness centralityof massive small-w...
The stagnant performance of single core processors, increasing size of data sets, and variety of str...