Computational Studies in Influencer Marketing: A Systematic Literature Review
Haoyang Gui, Thales Bertaglia, Catalina Goanta, Gerasimos Spanakis

TL;DR
This systematic review of 69 studies in computational influencer marketing identifies key themes, methodologies, and gaps, emphasizing the need for more nuanced, ethical, and regulatory-aware research with standardized datasets.
Contribution
First comprehensive systematic review of computational methods in influencer marketing, highlighting research gaps and proposing a multidisciplinary future research agenda.
Findings
Focus on commercial optimization techniques
Limited attention to regulation and ethics
Need for standardized datasets and contextual analysis
Abstract
Influencer marketing has become a crucial feature of digital marketing strategies. Despite its rapid growth and algorithmic relevance, the field of computational studies in influencer marketing remains fragmented, especially with limited systematic reviews covering the computational methodologies employed. This makes overarching scientific measurements in the influencer economy very scarce, to the detriment of interested stakeholders outside of platforms themselves, such as regulators, but also researchers from other fields. This paper aims to provide an overview of the state of the art of computational studies in influencer marketing by conducting a systematic literature review (SLR) based on the PRISMA model. The paper analyses 69 studies to identify key research themes, methodologies, and future directions in this research field. The review identifies four major research themes:…
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Taxonomy
TopicsDigital Marketing and Social Media
MethodsFocus
