Influence maximization aims at identifying a limited set of key individuals in a (social) network which spreads information based on some propagation model and maximizes the number of individuals reached. We show that influence maximization based on the probabilistic independent cascade model can be modeled as a stochastic maximal covering location problem. A reformulation based on Benders decomposition is proposed and a relation between obtained Benders optimality cuts and submodular cuts for correspondingly defined subsets is established. We introduce preprocessing tests, which allow us to remove variables from the model and develop efficient algorithms for the separation of Benders cuts. Both aspects are shown to be crucial ingredients o...
With the rapid development of online social networks, exploring influence maximization for product p...
© 2016 IEEE. Influence maximization is a key problem in viral marketing. Given a social network G an...
Influence maximization is a recent but well-studied problem which helps identify a small set of user...
Influence maximization aims at identifying a limited set of key individuals in a (social) network wh...
We consider the influence maximization problem (IMP) which asks for identifying a limited number of ...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
AbstractIn this paper, we study a new problem on social network influence maximization. The problem ...
In this paper, we study a new problem on social network influence maximization. The problem is defin...
As social networking services become a large part of modern life, interest in applications using soc...
Graph is a basic mathematical tool that models information about identities as well as their complex...
Given a specific propagation speed $h$ in a social network $G(V, E)$ , an influence circle(IC) of...
Abstract. The paper addresses the problem of finding top k influential nodes in large scale directed...
We consider the problem of selecting the most influential members within a social network, in order ...
In this paper we consider the problem of maximizing information propagation in social networks. To s...
With the rapid development of online social networks, exploring influence maximization for product p...
© 2016 IEEE. Influence maximization is a key problem in viral marketing. Given a social network G an...
Influence maximization is a recent but well-studied problem which helps identify a small set of user...
Influence maximization aims at identifying a limited set of key individuals in a (social) network wh...
We consider the influence maximization problem (IMP) which asks for identifying a limited number of ...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
AbstractIn this paper, we study a new problem on social network influence maximization. The problem ...
In this paper, we study a new problem on social network influence maximization. The problem is defin...
As social networking services become a large part of modern life, interest in applications using soc...
Graph is a basic mathematical tool that models information about identities as well as their complex...
Given a specific propagation speed $h$ in a social network $G(V, E)$ , an influence circle(IC) of...
Abstract. The paper addresses the problem of finding top k influential nodes in large scale directed...
We consider the problem of selecting the most influential members within a social network, in order ...
In this paper we consider the problem of maximizing information propagation in social networks. To s...
With the rapid development of online social networks, exploring influence maximization for product p...
© 2016 IEEE. Influence maximization is a key problem in viral marketing. Given a social network G an...
Influence maximization is a recent but well-studied problem which helps identify a small set of user...