“The most aggressive of algorithms”: User awareness of and attachment to TikTok’s content personalization

 

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書誌詳細
著者: Siles González, Ignacio, Meléndez Moran, Ariana
フォーマット: comunicación de congreso
出版日付:2021
その他の書誌記述:This paper examines how a group of TikTok users in Costa Rica made sense of the workings of its algorithmic content personalization, how they came to this understanding, and what the implications of their self-proclaimed awareness are for establishing a particular affective relationship with the app. Drawing on actor-network theory, we argue that the awareness that these users have of algorithms shapes their affective attachment to TikTok (which they often describe as a form of “addiction”). The paper examines how users carefully enacted various practical roles in order to maintain the affect associated with personalized content on the app. In this way, we add nuance to dominant accounts of the user-algorithm relationship. Rather than viewing it as constant, fixed, and universal, we argue for considering it as “always in the making.” The paper shows how this relationship undergoes multiple “passages” through which distinct capacities for both users and algorithms emerge.
国:Kérwá
機関:Universidad de Costa Rica
Repositorio:Kérwá
言語:Inglés
OAI Identifier:oai:kerwa.ucr.ac.cr:10669/83230
オンライン・アクセス:https://hdl.handle.net/10669/83230
キーワード:adiction
social media algorithm