We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
INTERNET OPENNESS AT RISK: GENERATIVE AI'S IMPACT ON DATA SCRAPING.
- Authors
Amarikwa, Melany
- Abstract
Modern scraping practices--the automated extraction of data from online websites--by companies employing generative AI models threatens the foundational and essential openness of the internet. There are calls for regulating the use of scraping in generative AI models, but lawmakers, concerned about its impact on US global AI leadership, have failed to act. This article presents two legal frameworks aimed at regulating generative AI scraping. The adverse possession framework addresses property rights and allows for the use of copyrighted works where the author abandons or fails to claim their works. The public records framework addresses privacy rights and treats personal information made publicly available by the subject as a public record with context-based privacy exemptions. These frameworks seek to strike a balance between private interests in development and the public's interest in safeguarding its property and privacy rights.
- Subjects
DATA extraction; ARTIFICIAL intelligence; COPYRIGHT; PUBLIC records; RIGHT of privacy
- Publication
Richmond Journal of Law & Technology, 2024, Vol 30, Issue 3, p533
- ISSN
1091-7322
- Publication type
Article