Good models borrow, great models steal: intellectual property rights and generative AI

IF 5.7 1区 社会学 Q1 POLITICAL SCIENCE Policy and Society Pub Date : 2024-02-12 DOI:10.1093/polsoc/puae006
Simon Chesterman
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Abstract

Two critical policy questions will determine the impact of generative artificial intelligence (AI) on the knowledge economy and the creative sector. The first concerns how we think about the training of such models—in particular, whether the creators or owners of the data that are “scraped” (lawfully or unlawfully, with or without permission) should be compensated for that use. The second question revolves around the ownership of the output generated by AI, which is continually improving in quality and scale. These topics fall in the realm of intellectual property, a legal framework designed to incentivize and reward only human creativity and innovation. For some years, however, Britain has maintained a distinct category for “computer-generated” outputs; on the input issue, the EU and Singapore have recently introduced exceptions allowing for text and data mining or computational data analysis of existing works. This article explores the broader implications of these policy choices, weighing the advantages of reducing the cost of content creation and the value of expertise against the potential risk to various careers and sectors of the economy, which might be rendered unsustainable. Lessons may be found in the music industry, which also went through a period of unrestrained piracy in the early digital era, epitomized by the rise and fall of the file-sharing service Napster. Similar litigation and legislation may help navigate the present uncertainty, along with an emerging market for “legitimate” models that respect the copyright of humans and are clear about the provenance of their own creations.
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好模型借用,大模型偷窃:知识产权与生成式人工智能
两个关键的政策问题将决定生成式人工智能(AI)对知识经济和创意产业的影响。第一个问题涉及我们如何看待此类模型的训练问题,特别是被 "搜刮"(合法或非法、经许可或未经许可)的数据的创建者或所有者是否应就这种使用获得补偿。第二个问题是人工智能所产生的产出的所有权问题,人工智能的质量和规模都在不断提高。这些问题都属于知识产权的范畴,而知识产权是一个法律框架,旨在激励和奖励人类的创造力和创新。不过,多年来,英国一直为 "计算机生成 "的产出保留了一个独特的类别;在输入问题上,欧盟和新加坡最近推出了例外条款,允许对现有作品进行文本和数据挖掘或计算数据分析。本文探讨了这些政策选择的广泛影响,权衡了降低内容创作成本和专业技术价值的优势与各种职业和经济部门可能面临的潜在风险,因为后者可能导致无法持续发展。音乐产业也经历过早期数字时代无节制盗版的时期,文件共享服务 Napster 的兴衰就是一个缩影。类似的诉讼和立法可能有助于应对当前的不确定性,以及尊重人类版权、明确自身创作来源的 "合法 "模式的新兴市场。
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来源期刊
Policy and Society
Policy and Society Multiple-
CiteScore
18.00
自引率
6.50%
发文量
43
审稿时长
30 weeks
期刊介绍: Policy and Society is a prominent international open-access journal publishing peer-reviewed research on critical issues in policy theory and practice across local, national, and international levels. The journal seeks to comprehend the origin, functioning, and implications of policies within broader political, social, and economic contexts. It publishes themed issues regularly and, starting in 2023, will also feature non-themed individual submissions.
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