The forgotten creator: Towards a statutory remuneration right for machine learning of generative AI

被引:3
|
作者
Geiger, Christophe [1 ,3 ,4 ,5 ]
Iaia, Vincenzo [2 ,6 ]
机构
[1] Luiss Guido Carli Univ, Law, Rome, Italy
[2] Luiss Guido Carli Univ, Rome, Italy
[3] NYU, Law, New York, NY USA
[4] Int Assoc Advancement Teaching & Res Intellectual, Nashville, TN USA
[5] Case Western Reserve Univ, Spangenberg Ctr Law Technol & Arts, Law & Technol, Sch Law, Cleveland, OH USA
[6] Univ Bari, Business Law & Intellectual Property Law, Bari, Italy
关键词
Copyright; Fundamental rights; Generative AI; Algorithmic creativity; Statutory license; Fair remuneration;
D O I
10.1016/j.clsr.2023.105925
中图分类号
D9 [法律]; DF [法律];
学科分类号
0301 ;
摘要
Generative AI is disrupting the creative process(es) of intellectual works on an unparalleled scale. Algorithmic tools are increasing users' production capacity for literary and artistic works to almost infinite levels. However, the quality of the outputs is strictly dependent on the quantity and quality of the inputs, some of which are protected by copyright. This scenario gave raise to tensions between copyright holders and generative AI companies. While the formers claim control over this new kind of exploitation of their works, the latters wish to train their algorithms freely with as many contents as possible. This contribution suggests exploring the idea of introducing a statutory license for machine learning purposes as a compromise solution to ensure an attractive environment for artificial intelligence without marginalizing the role played by human authors. This remuner-ation proposal is rooted in a fundamental rights analysis that balances i.e., the right to science and culture and freedom of artistic expression (Arts. 11 and 13 EUCF, 19 UDHR, 27.1 UDHR, 15.1 a and b ICESCR) vis-`a-vis the right for creators to benefit from the protection of the moral and material interests resulting from their scientific, literary or artistic production (Arts. 17.2 EUCF, 27.2 UDHR, and 15.1 c ICESCR).
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页数:9
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