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Main Authors: González-Espinoza, Alfredo, Jebbia, Dom, Lan, Haoyong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.17189
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author González-Espinoza, Alfredo
Jebbia, Dom
Lan, Haoyong
author_facet González-Espinoza, Alfredo
Jebbia, Dom
Lan, Haoyong
contents Recent advances in machine learning and artificial intelligence have provided more alternatives for the implementation of repetitive or monotonous tasks. However, the development of AI tools has not been straightforward, and use case exploration and workflow integration are still ongoing challenges. In this work, we present a detailed qualitative analysis of the performance and user experience of popular commercial AI chatbots when used for document classification with limited data. We report the results for a real-world example of metadata augmentation in academic libraries environment. We compare the results of AI chatbots with other machine learning and natural language processing methods such as XGBoost and BERT-based fine tuning, and share insights from our experience. We found that AI chatbots perform similarly among them while outperforming the machine learning methods we tested, showing their advantage when the method relies on local data for training. We also found that while working with AI chatbots is easier than with code, getting useful results from them still represents a challenge for the user. Furthermore, we encountered alarming conceptual errors in the output of some chatbots, such as not being able to count the number of lines of our inputs and explaining the mistake as ``human error''. Although this is not complete evidence that AI chatbots can be effectively used for metadata classification, we believe that the information provided in this work can be useful to librarians and data curators in developing pathways for the integration and use of AI tools for data curation or metadata augmentation tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2504_17189
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Metadata Augmentation using NLP, Machine Learning and AI chatbots: A comparison
González-Espinoza, Alfredo
Jebbia, Dom
Lan, Haoyong
Digital Libraries
Recent advances in machine learning and artificial intelligence have provided more alternatives for the implementation of repetitive or monotonous tasks. However, the development of AI tools has not been straightforward, and use case exploration and workflow integration are still ongoing challenges. In this work, we present a detailed qualitative analysis of the performance and user experience of popular commercial AI chatbots when used for document classification with limited data. We report the results for a real-world example of metadata augmentation in academic libraries environment. We compare the results of AI chatbots with other machine learning and natural language processing methods such as XGBoost and BERT-based fine tuning, and share insights from our experience. We found that AI chatbots perform similarly among them while outperforming the machine learning methods we tested, showing their advantage when the method relies on local data for training. We also found that while working with AI chatbots is easier than with code, getting useful results from them still represents a challenge for the user. Furthermore, we encountered alarming conceptual errors in the output of some chatbots, such as not being able to count the number of lines of our inputs and explaining the mistake as ``human error''. Although this is not complete evidence that AI chatbots can be effectively used for metadata classification, we believe that the information provided in this work can be useful to librarians and data curators in developing pathways for the integration and use of AI tools for data curation or metadata augmentation tasks.
title Metadata Augmentation using NLP, Machine Learning and AI chatbots: A comparison
topic Digital Libraries
url https://arxiv.org/abs/2504.17189