Using LLM-Based Approaches to Enhance and Automate Topic Labeling (2502.18469v1)
Abstract: Topic modeling has become a crucial method for analyzing text data, particularly for extracting meaningful insights from large collections of documents. However, the output of these models typically consists of lists of keywords that require manual interpretation for precise labeling. This study explores the use of LLMs to automate and enhance topic labeling by generating more meaningful and contextually appropriate labels. After applying BERTopic for topic modeling, we explore different approaches to select keywords and document summaries within each topic, which are then fed into an LLM to generate labels. Each approach prioritizes different aspects, such as dominant themes or diversity, to assess their impact on label quality. Additionally, recognizing the lack of quantitative methods for evaluating topic labels, we propose a novel metric that measures how semantically representative a label is of all documents within a topic.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.