Automatic detection of influencers in social networks: Authority versus domain signals
Javier Rodríguez‐Vidal,
Julio Gonzalo,
Laura Plaza and
Henry Anaya Sánchez
Journal of the Association for Information Science & Technology, 2019, vol. 70, issue 7, 675-684
Abstract:
Given the task of finding influencers (opinion makers) for a given domain in a social network, we investigate (a) what is the relative importance of domain and authority signals, (b) what is the most effective way of combining signals (voting, classification, learning to rank, etc.) and how best to model the vocabulary signal, and (c) how large is the gap between supervised and unsupervised methods and what are the practical consequences. Our best results on the RepLab dataset (which improves the state of the art) uses language models to learn the domain‐specific vocabulary used by influencers and combines domain and authority models using a Learning to Rank algorithm. Our experiments show that (a) both authority and domain evidence can be trained from the vocabulary of influencers; (b) once the language of influencers is modeled as a likelihood signal, further supervised learning and additional network‐based signals only provide marginal improvements; and (c) the availability of training data sets is crucial to obtain competitive results in the task. Our most remarkable finding is that influencers do use a distinctive vocabulary, which is a more reliable signal than nontextual network indicators such as the number of followers, retweets, and so on.
Date: 2019
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Persistent link: https://EconPapers.repec.org/RePEc:bla:jinfst:v:70:y:2019:i:7:p:675-684
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