TR-GPT-CF: A Topic Refinement Method using GPT and Coherence Filtering
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Traditional topic models are effective at uncovering patterns within large text corpora but often struggle with capturing the contextual nuances necessary for meaningful interpretation. As a result, these models may produce incoherent topics, making it challenging to achieve consistency and clarity in topic interpretation—limitations that hinder their utility for real-world applications requiring reliable insights. To overcome these challenges, we introduce a novel post-extracted topic refinement approach that uses z-score centroid-based misaligned word detection and hybrid semantic-contextual word replacement with WordNet and GPT to replace misaligned words within topics. Evaluations across multiple datasets reveal that our approach significantly enhances topic coherence, providing a robust solution for more interpretable and semantically coherent topics.