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Debunking Instagram's Algorithm-Sugarcoating

[working paper]

Gross, Tobey
Michaud, André
Zerrouki, Yassine
Hamood, Asaad

Corporate Editor
Zentrum für Medienpsychologie und Verhaltensforschung

Abstract

In 2021 and 2023, there were two distinct official statements published on the mechanics behind the algorithm responsible for Instagram's content feed curation, where the 2023 publication, named "Instagram Ranking Explained" is presented as an updated and expanded version of the one in 2021, named "... view more

In 2021 and 2023, there were two distinct official statements published on the mechanics behind the algorithm responsible for Instagram's content feed curation, where the 2023 publication, named "Instagram Ranking Explained" is presented as an updated and expanded version of the one in 2021, named "Shedding More Light on How Instagram Works". This paper examines the statements made therein by Adam Mosseri, the head of Instagram who authored the publications, comparing them with insights from contemporary literature and investigating the sentiment of the publications through a mixed-method sentiment analysis. The analysis aims to show, that the statements present the algorithm in a particularly positive light, downplaying and largely ignoring potential detriments. Statements are examined for pseudo-transparency, providing a veneer of openness, while concealing deeper economic motives through obscuring practices like data extraction and engagement maximization, especially in mid of rising criticism towards social networking sites.... view less

Keywords
social media; algorithm; opinion formation; online media; self-presentation

Classification
Interactive, electronic Media

Free Keywords
Instagram; content curation; recommender algorithms

Document language
English

Publication Year
2024

Page/Pages
25 p.

Series
ZeMV e-Publikation, 05/2024

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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Home  |  Legal notices  |  Operational concept  |  Privacy policy
© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.