arXiv:2607.09324v1 Announce Type: new Abstract: Identifying and assigning keywords at scale is a technical, practical, and ethical challenge for crowdsourced collections. This article reports the findings of the "Extracting Keywords from Crowdsourced Collections" project, which used the Their Finest Hour Online Archive, a crowdsourced Second World War digital collection hosted by the University of Oxford, as a case study. The project evaluated three Natural Language Processing approaches to automate keyword extraction: Named Entity Recognition, Keyword Extraction, and Topic Modelling. It tested these approaches across a range of artificial intelligence techniques, from traditional statistical methods to modern GenAI neural networks. Our quantitative and qualitative findings indicate that Natural Language Processing approaches offer real potential for keyword extraction at scale in crowdsourced collections, but that no single method offers a complete solution and that model choice significantly shapes results. We argue that in crowdsourced collections, where metadata is the direct product of engagement with living contributors, automated keyword extraction raises distinct stewardship responsibilities that must be addressed alongside technical performance. Open-weight, extractive models emerge from our evaluation as best placed to support responsible deployment, while generative AI, despite its abstractive potential, introduces accountability risks that anyone managing crowdsourced collections should weigh carefully.
Letting the Data Speak: Extracting Keywords from Crowdsourced Collections with AI
Researchers at the University of Oxford evaluated three Natural Language Processing approaches—Named Entity Recognition, Keyword Extraction, and Topic Modelling—for automating keyword extraction in crowdsourced collections, using the Their Finest Hour Online Archive as a case study. They found that while NLP methods offer potential for scaling keyword assignment, no single approach is complete, and model choice significantly impacts results. Open-weight extractive models were deemed best for responsible deployment, whereas generative AI introduces accountability risks for collections with living contributors.
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