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Sharenting and social media properties: Exploring vicarious data harms and sociotechnical mitigations.

Ugwudike, P., Roth, S., Lavorgna, A., Middleton, S. E., Djohari, N., Tartari, M. and Mandal, A., 2024. Sharenting and social media properties: Exploring vicarious data harms and sociotechnical mitigations. Big Data and Society, 11 (1). (In Press)

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DOI: 10.1177/20539517231219243

Abstract

In this paper, we demonstrate how social media technologies can co-produce data-related harms unless preventative measures are instituted. To this end, we draw on a passive ethnography of a public Facebook group in the UK practicing sharenting which occurs when parents and guardians post sensitive and identifying information about children in their care on social media. Theoretically, we draw on the ‘harm translation’ concept from digital criminology and the ‘seductions of crime’ perspective from cultural criminology. Further we analyse documents on the operations of Facebook's content filtering algorithms published by Meta (Facebook's parent company). With insights from these sources, we demonstrate how platform technologies go beyond facilitation to the inadvertent co-production of harm via embedded mediative properties that shape user perception and action. We show that, in the specific context of sharenting, the properties invite rather than simply facilitate the practice and can also invite subsequent misuses of child-centric data. Through our analysis of these dynamics, we set out an empirical basis for challenging reductive depictions of social media technologies as solely facilitative of human action including harmful conduct. We also outline our vision to integrate insights from the analysis into a new sociotechnical harm prevention framework informed by Natural Language Processing approaches.

Item Type:Article
ISSN:2053-9517
Uncontrolled Keywords:Sharenting; harm; Facebook; social media platforms; natural language processing
Group:Faculty of Health & Social Sciences
ID Code:40365
Deposited By: Symplectic RT2
Deposited On:01 Oct 2024 06:08
Last Modified:01 Oct 2024 06:08

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