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Autori principali: Shrestha, Ajay Kumar, Barthwal, Ankur, Campbell, Molly, Shouli, Austin, Syed, Saad, Joshi, Sandhya, Vassileva, Julita
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.16369
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author Shrestha, Ajay Kumar
Barthwal, Ankur
Campbell, Molly
Shouli, Austin
Syed, Saad
Joshi, Sandhya
Vassileva, Julita
author_facet Shrestha, Ajay Kumar
Barthwal, Ankur
Campbell, Molly
Shouli, Austin
Syed, Saad
Joshi, Sandhya
Vassileva, Julita
contents This systematic literature review investigates perceptions, concerns, and expectations of young digital citizens regarding privacy in artificial intelligence (AI) systems, focusing on social media platforms, educational technology, gaming systems, and recommendation algorithms. Using a rigorous methodology, the review started with 2,000 papers, narrowed down to 552 after initial screening, and finally refined to 108 for detailed analysis. Data extraction focused on privacy concerns, data-sharing practices, the balance between privacy and utility, trust factors in AI, transparency expectations, and strategies to enhance user control over personal data. Findings reveal significant privacy concerns among young users, including a perceived lack of control over personal information, potential misuse of data by AI, and fears of data breaches and unauthorized access. These issues are worsened by unclear data collection practices and insufficient transparency in AI applications. The intention to share data is closely associated with perceived benefits and data protection assurances. The study also highlights the role of parental mediation and the need for comprehensive education on data privacy. Balancing privacy and utility in AI applications is crucial, as young digital citizens value personalized services but remain wary of privacy risks. Trust in AI is significantly influenced by transparency, reliability, predictable behavior, and clear communication about data usage. Strategies to improve user control over personal data include access to and correction of data, clear consent mechanisms, and robust data protection assurances. The review identifies research gaps and suggests future directions, such as longitudinal studies, multicultural comparisons, and the development of ethical AI frameworks. The findings have significant implications for policy development and educational initiatives
format Preprint
id arxiv_https___arxiv_org_abs_2412_16369
institution arXiv
publishDate 2024
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spellingShingle Navigating AI to Unpack Youth Privacy Concerns: An In-Depth Exploration and Systematic Review
Shrestha, Ajay Kumar
Barthwal, Ankur
Campbell, Molly
Shouli, Austin
Syed, Saad
Joshi, Sandhya
Vassileva, Julita
Computers and Society
Machine Learning
This systematic literature review investigates perceptions, concerns, and expectations of young digital citizens regarding privacy in artificial intelligence (AI) systems, focusing on social media platforms, educational technology, gaming systems, and recommendation algorithms. Using a rigorous methodology, the review started with 2,000 papers, narrowed down to 552 after initial screening, and finally refined to 108 for detailed analysis. Data extraction focused on privacy concerns, data-sharing practices, the balance between privacy and utility, trust factors in AI, transparency expectations, and strategies to enhance user control over personal data. Findings reveal significant privacy concerns among young users, including a perceived lack of control over personal information, potential misuse of data by AI, and fears of data breaches and unauthorized access. These issues are worsened by unclear data collection practices and insufficient transparency in AI applications. The intention to share data is closely associated with perceived benefits and data protection assurances. The study also highlights the role of parental mediation and the need for comprehensive education on data privacy. Balancing privacy and utility in AI applications is crucial, as young digital citizens value personalized services but remain wary of privacy risks. Trust in AI is significantly influenced by transparency, reliability, predictable behavior, and clear communication about data usage. Strategies to improve user control over personal data include access to and correction of data, clear consent mechanisms, and robust data protection assurances. The review identifies research gaps and suggests future directions, such as longitudinal studies, multicultural comparisons, and the development of ethical AI frameworks. The findings have significant implications for policy development and educational initiatives
title Navigating AI to Unpack Youth Privacy Concerns: An In-Depth Exploration and Systematic Review
topic Computers and Society
Machine Learning
url https://arxiv.org/abs/2412.16369