Re-FRAME the Meeting Summarization SCOPE: Fact-Based Summarization and Personalization via Questions
PositiveArtificial Intelligence
The article discusses the challenges of meeting summarization using large language models (LLMs), which often produce error-prone outputs characterized by hallucinations, omissions, and irrelevancies. It introduces FRAME, a modular pipeline that reframes summarization as a semantic enrichment task, extracting and thematically organizing salient facts to create an enriched abstractive summary. Additionally, SCOPE is presented as a personalization protocol that guides the model in content selection through a series of questions. The evaluation framework P-MESA demonstrates high accuracy in identifying errors.
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