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Main Authors: Meisenbacher, Stephen, Klymenko, Alexandra, Kelley, Patrick Gage, Peddinti, Sai Teja, Thomas, Kurt, Matthes, Florian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.02027
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author Meisenbacher, Stephen
Klymenko, Alexandra
Kelley, Patrick Gage
Peddinti, Sai Teja
Thomas, Kurt
Matthes, Florian
author_facet Meisenbacher, Stephen
Klymenko, Alexandra
Kelley, Patrick Gage
Peddinti, Sai Teja
Thomas, Kurt
Matthes, Florian
contents The rise of powerful AI models, more formally $\textit{General-Purpose AI Systems}$ (GPAIS), has led to impressive leaps in performance across a wide range of tasks. At the same time, researchers and practitioners alike have raised a number of privacy concerns, resulting in a wealth of literature covering various privacy risks and vulnerabilities of AI models. Works surveying such risks provide differing focuses, leading to disparate sets of privacy risks with no clear unifying taxonomy. We conduct a systematic review of these survey papers to provide a concise and usable overview of privacy risks in GPAIS, as well as proposed mitigation strategies. The developed privacy framework strives to unify the identified privacy risks and mitigations at a technical level that is accessible to non-experts. This serves as the basis for a practitioner-focused interview study to assess technical stakeholder perceptions of privacy risks and mitigations in GPAIS.
format Preprint
id arxiv_https___arxiv_org_abs_2407_02027
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Privacy Risks of General-Purpose AI Systems: A Foundation for Investigating Practitioner Perspectives
Meisenbacher, Stephen
Klymenko, Alexandra
Kelley, Patrick Gage
Peddinti, Sai Teja
Thomas, Kurt
Matthes, Florian
Computers and Society
The rise of powerful AI models, more formally $\textit{General-Purpose AI Systems}$ (GPAIS), has led to impressive leaps in performance across a wide range of tasks. At the same time, researchers and practitioners alike have raised a number of privacy concerns, resulting in a wealth of literature covering various privacy risks and vulnerabilities of AI models. Works surveying such risks provide differing focuses, leading to disparate sets of privacy risks with no clear unifying taxonomy. We conduct a systematic review of these survey papers to provide a concise and usable overview of privacy risks in GPAIS, as well as proposed mitigation strategies. The developed privacy framework strives to unify the identified privacy risks and mitigations at a technical level that is accessible to non-experts. This serves as the basis for a practitioner-focused interview study to assess technical stakeholder perceptions of privacy risks and mitigations in GPAIS.
title Privacy Risks of General-Purpose AI Systems: A Foundation for Investigating Practitioner Perspectives
topic Computers and Society
url https://arxiv.org/abs/2407.02027