Social network analytics and visualization: Dynamic topic-based influence analysis in evolving micro-blogs
    
  
 
 
  
  
    
    
        Social network analytics and visualization: Dynamic topic-based influence analysis in evolving micro-blogs
    
  
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Date
    
    
        2023
    
  
Authors
  Paulo Jorge Azevedo
  João Gama
  Shazia Tabassum
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Abstract
    
    
        Influence Analysis is one of the well-known areas of Social Network Analysis. However, discovering influencers from micro-blog networks based on topics has gained recent popularity due to its specificity. Besides, these data networks are massive, continuous and evolving. Therefore, to address the above challenges we propose a dynamic framework for topic modelling and identifying influencers in the same process. It incorporates dynamic sampling, community detection and network statistics over graph data stream from a social media activity management application. Further, we compare the graph measures against each other empirically and observe that there is no evidence of correlation between the sets of users having large number of friends and the users whose posts achieve high acceptance (i.e., highly liked, commented and shared posts). Therefore, we propose a novel approach that incorporates a user's reachability and also acceptability by other users. Consequently, we improve on graph metrics by including a dynamic acceptance score (integrating content quality with network structure) for ranking influencers in micro-blogs. Additionally, we analysed the topic clusters' structure and quality with empirical experiments and visualization.