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Black Box or Open Science? Assessing Reproducibility-Related Documentation in AI Research

2024·2 Zitationen·Proceedings of the ... Annual Hawaii International Conference on System Sciences/Proceedings of the Annual Hawaii International Conference on System SciencesOpen Access
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2

Zitationen

5

Autoren

2024

Jahr

Abstract

The surge in Artificial Intelligence (AI) research has spurred significant breakthroughs across various fields.However, AI is known for its Black Box character and reproducing AI outcomes is a challenge.Open Science, emphasizing transparency, reproducibility, and accessibility, is crucial in this context, ensuring research validity and facilitating practical AI adoption.We propose a framework to assess the quality of AI documentation and assess 51 papers.We conclude that despite guidelines, many AI papers fall short on reproducibility due to insufficient documentation.It is crucial to provide comprehensive details on training data, source code, and AI models, and for reviewers and editors to strictly enforce reproducibility guidelines.A dearth of detailed methods or inaccessible source code and models can raise questions about the authenticity of certain AI innovations, potentially impeding their scientific value and their adoption.Although our sample size inhibits broad generalization, this study nonetheless offers key insights on enhancing AI research reproducibility.

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