Abstract
Influence cascades are typically analyzed using a single metric approach, i.e., all influence is measured using one number. However, social influence is not monolithic; different users exercise different influences in different ways, and influence is correlated with the user and content-specific attributes. One such attribute could be whether the action is an initiation of a new post, a contribution to a post, or a sharing of an existing post. In this paper, we present a novel method for tracking these influence relationships over time, which we call influence cascades, and present a visualization technique to better understand these cascades. We investigate these influence patterns within and across online social media platforms using empirical data and comparing to a scale-free network as a null model. Our results show that characteristics of influence cascades and patterns of influence are, in fact, affected by the platform and the community of the users.
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CITATION STYLE
Senevirathna, C., Gunaratne, C., Rand, W., Jayalath, C., & Garibay, I. (2021). Influence cascades: Entropy-based characterization of behavioral influence patterns in social media. Entropy, 23(2), 1–26. https://doi.org/10.3390/e23020160
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