Topic modeling with contextual representations from sentence transformers.
Project description
Your go-to package for topic modeling with contextual representations from transformers.
Intentions:
- Provide simple, robust and fast implementations of existing approaches (BERTopic, Top2Vec, CTM) with minimal dependencies.
- Implement state-of-the-art approaches from my papers. (papers work-in-progress)
- Put all approaches in a broader conceptual framework.
- Provide clear and extensive documentation about the best use-cases for each model.
- Make the models' API streamlined and compatible with topicwizard and scikit-learn.
- Develop smarter, transformer-based evaluation metrics.
(Stay tuned...)
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