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Conference paper ยท Preprint article

The complexity of social media response: Statistical evidence for one-dimensional engagement signal in Twitter

In Proceedings of the 12<sup>th</sup> International Conference on Agents and Artificial Intelligence โ€” 2020, pp. 918-925
From

Cognitive Systems, Department of Applied Mathematics and Computer Science, Technical University of Denmark1

Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Many years after online social networks exceeded our collective attention, social influence is still built on attention capital. Quality is not a prerequisite for viral spreading, yet large diffusion cascades remain the hallmark of a social influencer. Consequently, our exposure to low-quality content and questionable influence is expected to increase.

Since the conception of influence maximization frameworks, multiple content performance metrics became available, albeit raising the complexity of influence analysis. In this paper, we examine and consolidate a diverse set of content engagement metrics. The correlations discovered lead us to propose a new, more holistic, one-dimensional engagement signal.

We then show it is more predictable than any individual influence predictors previously investigated. Our proposed model achieves strong engagement ranking performance and is the first to explain half of the variance with features available early. We share the detailed numerical workflow to compute the new compound engagement signal.

The model is immediately applicable to social media monitoring, influencer identification, campaign engagement forecasting, and curating user feeds.

Language: English
Publisher: SCITEPRESS Digital Library
Year: 2020
Pages: 918-925
Proceedings: 12<sup>th</sup> International Conference on Agents and Artificial IntelligenceInternational Conference on Agents and Artificial Intelligence
ISBN: 9897583955 and 9789897583957
Types: Conference paper and Preprint article
DOI: 10.5220/0009169709180925
ORCIDs: Kowalczyk, Damian Konrad and Hansen, Lars Kai
Other keywords

cs.SI

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