Semantic homophily in online communication: evidence from Twitter
Sanja \v{S}\'cepanovi\'c, Igor Mishkovski, Bruno Gon\c{c}alves, Nguyen, Trung Hieu, Pan Hui

TL;DR
This paper investigates semantic homophily in Twitter communication networks, analyzing how content similarity influences social connections and how these dynamics evolve over time, providing new insights into online social behavior.
Contribution
It offers the first in-depth analysis of semantic homophily in communication networks, exploring its mechanisms, drivers, and temporal evolution on Twitter.
Findings
Semantic homophily varies across different content aspects.
Semantic similarity influences connection formation on Twitter.
Temporal analysis reveals evolution patterns of semantic homophily.
Abstract
People are observed to assortatively connect on a set of traits. This phenomenon, termed assortative mixing or sometimes homophily, can be quantified through assortativity coefficient in social networks. Uncovering the exact causes of strong assortative mixing found in social networks has been a research challenge. Among the main suggested causes from sociology are the tendency of similar individuals to connect (often itself referred as homophily) and the social influence among already connected individuals. An important question to researchers and in practice can be tackled, as we present here: understanding the exact mechanisms of interplay between these tendencies and the underlying social network structure. Namely, in addition to the mentioned assortativity coefficient, there are several other static and temporal network properties and substructures that can be linked to the…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Game Theory and Applications
