Open Science at the generative AI turn: An exploratory analysis of challenges and opportunities | Quantitative Science Studies | MIT Press

peter.suber's bookmarks 2024-12-17

Summary:

Abstract:  Technology influences Open Science (OS) practices, because conducting science in transparent, accessible, and participatory ways requires tools and platforms for collaboration and sharing results. Due to this relationship, the characteristics of the employed technologies directly impact OS objectives. Generative Artificial Intelligence (GenAI) is increasingly used by researchers for tasks such as text refining, code generation/editing, reviewing literature, and data curation/analysis. Nevertheless, concerns about openness, transparency, and bias suggest that GenAI may benefit from greater engagement with OS. GenAI promises substantial efficiency gains but is currently fraught with limitations that could negatively impact core OS values, such as fairness, transparency, and integrity, and may harm various social actors. In this paper, we explore the possible positive and negative impacts of GenAI on OS. We use the taxonomy within the UNESCO Recommendation on Open Science to systematically explore the intersection of GenAI and OS. We conclude that using GenAI could advance key OS objectives by broadening meaningful access to knowledge, enabling efficient use of infrastructure, improving engagement of societal actors, and enhancing dialogue among knowledge systems. However, due to GenAI’s limitations, it could also compromise the integrity, equity, reproducibility, and reliability of research. Hence, sufficient checks, validation, and critical assessments are essential when incorporating GenAI into research workflows.

 

Link:

https://direct.mit.edu/qss/article/doi/10.1162/qss_a_00337/125096/Open-Science-at-the-generative-AI-turn-An

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Open Access Tracking Project (OATP) » peter.suber's bookmarks

Tags:

oa.new oa.open_science oa.ai

Date tagged:

12/17/2024, 10:00

Date published:

12/17/2024, 05:00