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Autores principales: Janssens, Wannes, Bogaert, Matthias, Poel, Dirk Van den
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.19365
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author Janssens, Wannes
Bogaert, Matthias
Poel, Dirk Van den
author_facet Janssens, Wannes
Bogaert, Matthias
Poel, Dirk Van den
contents The BERTopic framework leverages transformer embeddings and hierarchical clustering to extract latent topics from unstructured text corpora. While effective, it often struggles with social media data, which tends to be noisy and sparse, resulting in an excessive number of overlapping topics. Recent work explored the use of large language models for end-to-end topic modelling. However, these approaches typically require significant computational overhead, limiting their scalability in big data contexts. In this work, we propose a framework that combines BERTopic for topic generation with large language models for topic reduction. The method first generates an initial set of topics and constructs a representation for each. These representations are then provided as input to the language model, which iteratively identifies and merges semantically similar topics. We evaluate the approach across three Twitter/X datasets and four different language models. Our method outperforms the baseline approach in enhancing topic diversity and, in many cases, coherence, with some sensitivity to dataset characteristics and initial parameter selection.
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id arxiv_https___arxiv_org_abs_2509_19365
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LLM-Assisted Topic Reduction for BERTopic on Social Media Data
Janssens, Wannes
Bogaert, Matthias
Poel, Dirk Van den
Computation and Language
Machine Learning
The BERTopic framework leverages transformer embeddings and hierarchical clustering to extract latent topics from unstructured text corpora. While effective, it often struggles with social media data, which tends to be noisy and sparse, resulting in an excessive number of overlapping topics. Recent work explored the use of large language models for end-to-end topic modelling. However, these approaches typically require significant computational overhead, limiting their scalability in big data contexts. In this work, we propose a framework that combines BERTopic for topic generation with large language models for topic reduction. The method first generates an initial set of topics and constructs a representation for each. These representations are then provided as input to the language model, which iteratively identifies and merges semantically similar topics. We evaluate the approach across three Twitter/X datasets and four different language models. Our method outperforms the baseline approach in enhancing topic diversity and, in many cases, coherence, with some sensitivity to dataset characteristics and initial parameter selection.
title LLM-Assisted Topic Reduction for BERTopic on Social Media Data
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2509.19365