We elaborate on a linear-time implementation of Collective-Influence (CI) algorithm introduced by Morone, Makse, Nature 524, 65 (2015) to find the minimal set of influencers in networks via optimal percolation. The computational complexity of CI is O(N log N) when removing nodes one-by-one, made possible through an appropriate data structure to process CI. We introduce two Belief-Propagation (BP) variants of CI that consider global optimization via message-passing: CI propagation (CIP) and Collective- Immunization-Belief-Propagation algorithm (CIBP) based on optimal immunization. Both identify a slightly smaller fraction of influencers than CI and, remarkably, reproduce the exact analytical optimal percolation threshold obtained in Random S...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
Online social networks play an important role in marketing services. Influence maximization is a maj...
Influence maximization in a social network refers to the selection of node sets that support the fas...
We elaborate on a linear-time implementation of Collective-Influence (CI) algorithm introduced by Mo...
Identifying the most influential spreaders that maximize information flow is a central question in n...
The influence maximization problem is to find a subset of vertexes that maximize the spread of inform...
[[abstract]]Given a social graph, the problem of influence maximization is to determine a set of nod...
With an increasing number of users spending time on social media platforms and engaging with family,...
Graph is a basic mathematical tool that models information about identities as well as their complex...
Influence maximization is a fundamental research problem in social networks. Viral marketing, one of...
The goal of classic influence maximization in Online Social Networks (OSNs) is to maximize the sprea...
Abstract—Influence maximization is a fundamental research problem in social networks. Viral marketin...
International audienceWe study the online influence maximization problem in social networks under th...
An online platform where various people come together to share information and communicate is called...
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...
Online social networks play an important role in marketing services. Influence maximization is a maj...
Influence maximization in a social network refers to the selection of node sets that support the fas...
We elaborate on a linear-time implementation of Collective-Influence (CI) algorithm introduced by Mo...
Identifying the most influential spreaders that maximize information flow is a central question in n...
The influence maximization problem is to find a subset of vertexes that maximize the spread of inform...
[[abstract]]Given a social graph, the problem of influence maximization is to determine a set of nod...
With an increasing number of users spending time on social media platforms and engaging with family,...
Graph is a basic mathematical tool that models information about identities as well as their complex...
Influence maximization is a fundamental research problem in social networks. Viral marketing, one of...
The goal of classic influence maximization in Online Social Networks (OSNs) is to maximize the sprea...
Abstract—Influence maximization is a fundamental research problem in social networks. Viral marketin...
International audienceWe study the online influence maximization problem in social networks under th...
An online platform where various people come together to share information and communicate is called...
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...
Online social networks play an important role in marketing services. Influence maximization is a maj...
Influence maximization in a social network refers to the selection of node sets that support the fas...