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Benchmarking topic models on scientific articles using BERTeley

Eric Chagnon, Ronald Pandolfi, Jeffrey J. Donatelli, Daniela Ushizima

2023Natural Language Processing Journal23 citationsDOIOpen Access PDF

Abstract

The introduction of BERTopic marked a crucial advancement in topic modeling and presented a topic model that outperformed both traditional and modern topic models in terms of topic modeling metrics on a variety of corpora. However, unique issues arise when topic modeling is performed on scientific articles. This paper introduces BERTeley, an innovative tool built upon BERTopic, designed to alleviate these shortcomings and improve the usability of BERTopic when conducting topic modeling on a corpus consisting of scientific articles. This is accomplished through BERTeley’s three main features: scientific article preprocessing, topic modeling using pre-trained scientific language models, and topic model metric calculation. Furthermore, an experiment was conducted comparing topic models using four different language models in three corpora consisting of scientific articles.

Topics & Concepts

Computer scienceTopic modelBenchmarkingVariety (cybernetics)UsabilityData scienceLanguage modelScientific modellingMetric (unit)Scientific literatureInformation retrievalNatural language processingArtificial intelligenceEngineeringHuman–computer interactionMarketingOperations managementPaleontologyPhilosophyBusinessBiologyEpistemologyTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
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