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AI ethics and new digital cultures: the case of sharenting

AI ethics and new digital cultures: the case of sharenting
AI ethics and new digital cultures: the case of sharenting
Families sharent – they share sensitive and identifying information about their children online. Parents might share photos of their children’s school sports day revealing their location, discuss sensitive family issues online in divorce advice groups, or seek health information from online communities. Such practices are far from the exclusive preserve of celebrities, or professional ‘influencers’ motivated by the prospect of lucrative promotional contracts. Anyone can be a sharenter, from relatives such as grandparents, to schools. But such practices can be associated with online risks and can infringe children’s rights. For www.parenting.digital, Prof Pamela Ugwudike discusses her research and how best to develop AI-driven approaches to detecting and preventing such risks.
London School of Economics and Political Science
Ugwudike, Pamela
2faf9318-093b-4396-9ba1-2291c8991bac
Ugwudike, Pamela
2faf9318-093b-4396-9ba1-2291c8991bac

Pamela Ugwudike (Author) (2023) AI ethics and new digital cultures: the case of sharenting London School of Economics and Political Science

Record type: Website

Abstract

Families sharent – they share sensitive and identifying information about their children online. Parents might share photos of their children’s school sports day revealing their location, discuss sensitive family issues online in divorce advice groups, or seek health information from online communities. Such practices are far from the exclusive preserve of celebrities, or professional ‘influencers’ motivated by the prospect of lucrative promotional contracts. Anyone can be a sharenter, from relatives such as grandparents, to schools. But such practices can be associated with online risks and can infringe children’s rights. For www.parenting.digital, Prof Pamela Ugwudike discusses her research and how best to develop AI-driven approaches to detecting and preventing such risks.

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More information

Published date: 1 November 2023

Identifiers

Local EPrints ID: 484319
URI: http://eprints.soton.ac.uk/id/eprint/484319
PURE UUID: e6f97eba-50b2-4968-bf6a-83cb9fc0a24e
ORCID for Pamela Ugwudike: ORCID iD orcid.org/0000-0002-1084-7796

Catalogue record

Date deposited: 15 Nov 2023 18:01
Last modified: 27 Mar 2024 02:51

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