Title of article :
Influence maximization in complex social networks based on community structure
Author/Authors :
Amiri, Babak School of Industrial Engineering - Iran University of Science and Technology - Tehran, Iran , Fathian, Mohammad School of Industrial Engineering - Iran University of Science and Technology - Tehran, Iran , Asaadi, Elnaz School of Industrial Engineering - Iran University of Science and Technology - Tehran, Iran
Abstract :
Many real-world networks, including biological networks, internet, information
and social networks can be modeled by a complex network consisting of a large
number of elements connected to each other. One of the important issues in
complex networks is the evaluation of node importance because of its wide usage
and great theoretical significance, such as in information diffusion, control of
disease spreading, viral marketing and rumor dynamics. A fundamental issue is to
identify a set of most influential individuals who would maximize the influence
spread of the network. In this paper, we propose a novel algorithm for identifying
influential nodes in complex networks with community structure without having
to determine the number of seed nodes based on genetic algorithm. The proposed
algorithm can identify influential nodes with three methods at each stage (degree
centrality, random and structural hole) in each community and measure the
spread of influence again at each stage. This process continues until the end of the
genetic algorithm, and at the last stage, the most influential nodes are identified
with maximum diffusion in each community. Our community-based influencers
detection approach enables us to find more influential nodes than those suggested
by page-rank and other centrality measures. Furthermore, the proposed algorithm
does not require determining the number of k initial active nodes.
Keywords :
Influential nodes , complex networks , community detection , influence maximization
Journal title :
Journal of Industrial and Systems Engineering (JISE)