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Empowering knowledge through AI: open scholarship proactively supporting well trained generative AI
1
Zitationen
1
Autoren
2024
Jahr
Abstract
Generative AI has taken the world by storm over the last few years, and the world of scholarly communications has not been immune to this. Most discussions in this area address how we can integrate these tools into our workflows, concerns about how researchers and students might misuse the technology or the unauthorised use of copyrighted work. This article argues for a novel viewpoint that librarians and publishers should be encouraging the use of their scholarly content in the training of AI algorithms. Inclusion of scholarly works would advance the reliability and accuracy of the information in training datasets and ensure that this content is included in new knowledge discovery platforms. The article also argues that inclusion can be achieved by improving linkage to content, and, by making sure that licences explicitly allow inclusion in AI training datasets, it advocates for a more collaborative approach to shaping the future of the information landscape in academia.
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