We present a new lock-free parallel algorithm for computing betweenness centrality of massive small-world networks. With minor changes to the data structures, our algorithm also achieves better spatial cache locality compared to previous approaches. Betweenness centrality is a key algorithm kernel in HPCS SSCA#2, a benchmark extensively used to evaluate the performance of emerging high-performance computing architectures for graph-theoretic computations. We design optimized implementations of betweenness centrality and the SSCA#2 benchmark for two hardware multithreaded systems: a Cray XMT system with the Threadstorm processor, and a single-socket Sun multicore server with the UltraSPARC T2 processor. For a small-world network of 134 millio...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently ...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
We present a new lock-free parallel algorithm for computing betweenness centralityof massive small-w...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently u...
Abstract—In this paper we present a multi-grained parallel algorithm for computing betweenness centr...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently u...
This paper presents a joint study of application and architecture to improve the performance and sca...
This paper presents a joint study of application and architecture to improve the performance and sca...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the influence of a ver...
The betweenness centrality index is essential in the analysis of social networks, but costly to comp...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
Abstract—Betweenness centrality is an important metric in the study of network analysis. This report...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently ...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...
We present a new lock-free parallel algorithm for computing betweenness centralityof massive small-w...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently u...
Abstract—In this paper we present a multi-grained parallel algorithm for computing betweenness centr...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently u...
This paper presents a joint study of application and architecture to improve the performance and sca...
This paper presents a joint study of application and architecture to improve the performance and sca...
AbstractBetweenness centrality is a graph analytic that states the importance of a vertex based on t...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the influence of a ver...
The betweenness centrality index is essential in the analysis of social networks, but costly to comp...
Betweenness Centrality (BC) is steadily growing in popularity as a metrics of the inuence of a verte...
Abstract—Betweenness centrality is an important metric in the study of network analysis. This report...
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently ...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Abstract. Betweenness centrality ranks the importance of nodes by their participation in all shortes...