Bibliographic Details
Authors and Corporations: Agah, Afrand, Asadi, Mehran
In: International Journal of Virtual Communities and Social Networking, 9, 2017, 4, p. 1-17
published:
IGI Global
Media Type: Article, E-Article

Not logged in

further information
Physical Description: 1-17
ISSN: 1942-9029
1942-9010
DOI: 10.4018/ijvcsn.2017100101
published in: International Journal of Virtual Communities and Social Networking
Language: Ndonga
Subjects:
Collection: IGI Global (CrossRef)
Table of Contents

<p>This article introduces a new method to discover the role of influential people in online social networks and presents an algorithm that recognizes influential users to reach a target in the network, in order to provide a strategic advantage for organizations to direct the scope of their digital marketing strategies. Social links among friends play an important role in dictating their behavior in online social networks, these social links determine the flow of information in form of wall posts via shares, likes, re-tweets, mentions, etc., which determines the influence of a node. This article initially identities the correlated nodes in large data sets using customized divide-and-conquer algorithm and then measures the influence of each of these nodes using a linear function. Furthermore, the empirical results show that users who have the highest influence are those whose total number of friends are closer to the total number of friends of each node divided by the total number of nodes in the network.</p>