Influence Maximization, aiming at selecting a small set of seed users in a social network to maximize the spread of influence, has attracted considerable attention recently. Most existing influence maximization algorithms focus on pure networks, while in many real-world social networks, nodes are often associated with a rich set of attributes or features, aka attributed networks. Moreover, most of existing influence maximization methods suffer from the problems of high computational cost and no performance guarantee, as these methods heavily depend on analysis and exploitation of network structure. In this paper, we propose a new algorithm to solve community-based influence maximization problem in attributed networks, which consists of thre...
Online social networks (OSNs) have become a powerful medium of communicating, sharing and disseminat...
As the pervasiveness of social networks increases, new NP-hard related problems become interesting f...
Both community detection and influence maximization are well-researched fields of network science. H...
Online social networks are increasingly connecting people around the world. Influence maximization i...
Given a social graph, the influence maximization problem (IMP) is the act of selecting a group of no...
[[abstract]]Given a social graph, the problem of influence maximization is to determine a set of nod...
The main purpose in influence maximization, which is motivated by the idea of viral marketing in soc...
The problem of Influence Maximization (IM) aims to find a small set of k nodes (seed nodes) in a soc...
In many real world applications of influence maximization, practitioners intervene in a population w...
Contains fulltext : 178406.pdf (publisher's version ) (Closed access)The main purp...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
Influence maximization in a social network refers to the selection of node sets that support the fas...
As the pervasiveness of social networks increases, new NP-hard related problems become interesting f...
Online social networks (OSNs) have become a powerful medium of communicating, sharing and disseminat...
As the pervasiveness of social networks increases, new NP-hard related problems become interesting f...
Both community detection and influence maximization are well-researched fields of network science. H...
Online social networks are increasingly connecting people around the world. Influence maximization i...
Given a social graph, the influence maximization problem (IMP) is the act of selecting a group of no...
[[abstract]]Given a social graph, the problem of influence maximization is to determine a set of nod...
The main purpose in influence maximization, which is motivated by the idea of viral marketing in soc...
The problem of Influence Maximization (IM) aims to find a small set of k nodes (seed nodes) in a soc...
In many real world applications of influence maximization, practitioners intervene in a population w...
Contains fulltext : 178406.pdf (publisher's version ) (Closed access)The main purp...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
Maximizing Influence (IM) in social networks has a considerable role to play in the phenomenon of vi...
Influence maximization in a social network refers to the selection of node sets that support the fas...
As the pervasiveness of social networks increases, new NP-hard related problems become interesting f...
Online social networks (OSNs) have become a powerful medium of communicating, sharing and disseminat...
As the pervasiveness of social networks increases, new NP-hard related problems become interesting f...
Both community detection and influence maximization are well-researched fields of network science. H...