Compliance Generation for Privacy Documents under GDPR: A Roadmap for Implementing Automation and Machine Learning

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Authors David Restrepo Amariles, Aurore ClΓ©ment Troussel, Rajaa El Hamdani arXiv ID 2012.12718 Category cs.AI: Artificial Intelligence Cross-listed cs.LG Citations 4 Venue arXiv.org Last Checked 4 months ago
Abstract
Most prominent research today addresses compliance with data protection laws through consumer-centric and public-regulatory approaches. We shift this perspective with the Privatech project to focus on corporations and law firms as agents of compliance. To comply with data protection laws, data processors must implement accountability measures to assess and document compliance in relation to both privacy documents and privacy practices. In this paper, we survey, on the one hand, current research on GDPR automation, and on the other hand, the operational challenges corporations face to comply with GDPR, and that may benefit from new forms of automation. We attempt to bridge the gap. We provide a roadmap for compliance assessment and generation by identifying compliance issues, breaking them down into tasks that can be addressed through machine learning and automation, and providing notes about related developments in the Privatech project.
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