Inferring social networks from unstructured text data: A proof of concept detection of hidden communities of interest

Author:

Malaterre ChristopheORCID,Lareau Francis

Abstract

Abstract Social network analysis is known to provide a wealth of insights relevant to many aspects of policymaking. Yet, the social data needed to construct social networks are not always available. Furthermore, even when they are, interpreting such networks often relies on extraneous knowledge. Here, we propose an approach to infer social networks directly from the texts produced by actors and the terminological similarities that these texts exhibit. This approach relies on fitting a topic model to the texts produced by these actors and measuring topic profile correlations between actors. This reveals what can be called “hidden communities of interest,” that is, groups of actors sharing similar semantic contents but whose social relationships with one another may be unknown or underlying. Network interpretation follows from the topic model. Diachronic perspectives can also be built by modeling the networks over different time periods and mapping genealogical relationships between communities. As a case study, the approach is deployed over a working corpus of academic articles (domain of philosophy of science; N=16,917).

Publisher

Cambridge University Press (CUP)

Subject

General Medicine

Reference72 articles.

1. Identifying product opportunities using social media mining: Application of topic modeling and chance discovery theory;Ko;IEEE Access,2018

2. Building a large annotated corpus of English: The Penn Treebank;Marcus;Computational Linguistics,1993

3. Patterns of democracy? Social network analysis of parliamentary twitter networks in 12 countries;Praet;Online Social Networks and Media,2021

4. Mapping networks of terrorist cells;Krebs;Connect,2002

5. A unified semi-supervised community detection framework using latent space graph regularization;Yang;IEEE Transactions on Cybernetics,2014

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