Uncertain Boundaries: Multidisciplinary Approaches to Copyright Issues in Generative AI
Archer Amon, Zhipeng Yin, Zichong Wang, Avash Palikhe, Wenbin Zhang

TL;DR
This paper presents a multidisciplinary survey on copyright issues in generative AI, analyzing legal, technical, and economic aspects, and proposing strategies for regulation, detection, and protection of creative works.
Contribution
It synthesizes insights from law, policy, economics, and computer science to address copyright challenges in generative AI, offering comprehensive strategies and technical solutions.
Findings
Identifies key legal and technical challenges in AI copyright issues.
Proposes methods for detecting and preventing copyright infringement.
Suggests regulatory and technical strategies for safeguarding creative works.
Abstract
Generative AI is becoming increasingly prevalent in creative fields, sparking urgent debates over how current copyright laws can keep pace with technological innovation. Recent controversies of AI models generating near-replicas of copyrighted material highlight the need to adapt current legal frameworks and develop technical methods to mitigate copyright infringement risks. This task requires understanding the intersection between computational concepts such as large-scale data scraping and probabilistic content generation, legal definitions of originality and fair use, and economic impacts on IP rights holders. However, most existing research on copyright in AI takes a purely computer science or law-based approach, leaving a gap in coordinating these approaches that only multidisciplinary efforts can effectively address. To bridge this gap, our survey adopts a comprehensive approach…
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Taxonomy
TopicsLaw, AI, and Intellectual Property
