Assessing Research Collaboration in Database Systems and Computer Networks by Analysis of Coauthorship Network

  • Adeel Ahmed The University of Haripur, Haripur, KPK, Pakistan
  • Tanveer Ahmed The University of Lahore, Gujrat Campus, Pakistan
Keywords: Social Network Analysis, Centrality Measures, Community Detection, Complex Network, Undirected Graph

Abstract

Community detection is a fundamental problem in social networks. These networks detect communities based on link analysis and strong connection strengths, but cannot reflect Author’s from different research areas. To address the problem of community detection, we have done a study for “Analyzing patterns of collaboration in co-authorship network using Modularity and Centrality Measures”. This analysis study uses combine features of Modularity with centrality measure to effectively detect community of different author’s having different research collaboration with different interests in domain of Computer Networks and Database Systems. Experiment of Dataset shown that this approach is better detect best authors from specific domain having high collaboration with other coauthors and presents information to the researcher’s that have relative interest in relative author’s community.

Published
2020-07-22