Pre-training is a Hot Topic: Contextualized Document Embeddings Improve
Topic Coherence
- URL: http://arxiv.org/abs/2004.03974v2
- Date: Thu, 17 Jun 2021 11:06:11 GMT
- Title: Pre-training is a Hot Topic: Contextualized Document Embeddings Improve
Topic Coherence
- Authors: Federico Bianchi, Silvia Terragni, and Dirk Hovy
- Abstract summary: We find that our approach produces more meaningful and coherent topics than traditional bag-of-words topic models and recent neural models.
Our results indicate that future improvements in language models will translate into better topic models.
- Score: 29.874072827824627
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Topic models extract groups of words from documents, whose interpretation as
a topic hopefully allows for a better understanding of the data. However, the
resulting word groups are often not coherent, making them harder to interpret.
Recently, neural topic models have shown improvements in overall coherence.
Concurrently, contextual embeddings have advanced the state of the art of
neural models in general. In this paper, we combine contextualized
representations with neural topic models. We find that our approach produces
more meaningful and coherent topics than traditional bag-of-words topic models
and recent neural models. Our results indicate that future improvements in
language models will translate into better topic models.
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