Abstract—Community detection and influence analysis are significant notions in social networks. We exploit the implicit knowledge of influence-based connectivity and proximity encoded in the network topology, and propose a novel algorithm for both community detection and influence ranking. Using a new influence cascade model, the algorithm generates an influence vector for each node, which captures in detail how the node’s influence is distributed through the network. Similarity in this influence space defines a new, meaningful and refined connectivity measure for the closeness of any pair of nodes. Our approach not only differentiates the influence ranking but also effectively finds communities in both undirected and directed networks, and...
We live in a world where social media has been deeply rooted in our lives. Whether it is on our comp...
Given a social graph, the influence maximization problem (IMP) is the act of selecting a group of no...
Computing influential nodes gets a lot of attention from many researchers for information spreading ...
Abstract—Community detection and influence analysis are significant notions in social networks. We e...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Influential nodes are rare in social networks, but their influence can quickly spread to most nodes ...
Influence Maximization, aiming at selecting a small set of seed users in a social network to maximiz...
International audienceQuantifying a node’s importance is decisive for developing efficient strategie...
Social networks have significant role in distribution of ideas and advertisement. Discovering the mo...
Online social networks are increasingly connecting people around the world. Influence maximization i...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
With the proliferation of graph applications in social network analysis, biological networks, WWW an...
We study the influence diffusion problem in online social networks. Formally, given a network repres...
The problem of Influence Maximization (IM) aims to find a small set of k nodes (seed nodes) in a soc...
Users in online networks exert different influence during the process of information propagation, an...
We live in a world where social media has been deeply rooted in our lives. Whether it is on our comp...
Given a social graph, the influence maximization problem (IMP) is the act of selecting a group of no...
Computing influential nodes gets a lot of attention from many researchers for information spreading ...
Abstract—Community detection and influence analysis are significant notions in social networks. We e...
Community structures and relation patterns, and ranking them for social networks provide us with gre...
Influential nodes are rare in social networks, but their influence can quickly spread to most nodes ...
Influence Maximization, aiming at selecting a small set of seed users in a social network to maximiz...
International audienceQuantifying a node’s importance is decisive for developing efficient strategie...
Social networks have significant role in distribution of ideas and advertisement. Discovering the mo...
Online social networks are increasingly connecting people around the world. Influence maximization i...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
With the proliferation of graph applications in social network analysis, biological networks, WWW an...
We study the influence diffusion problem in online social networks. Formally, given a network repres...
The problem of Influence Maximization (IM) aims to find a small set of k nodes (seed nodes) in a soc...
Users in online networks exert different influence during the process of information propagation, an...
We live in a world where social media has been deeply rooted in our lives. Whether it is on our comp...
Given a social graph, the influence maximization problem (IMP) is the act of selecting a group of no...
Computing influential nodes gets a lot of attention from many researchers for information spreading ...