To enhance the explainability of meeting summarization, we construct a new dataset called “ExplainMeetSum,” an augmented version of QMSum, by newly annotating evidence sentences that faithfully “explain” a summary. Using ExplainMeetSum, we propose a novel multiple extractor guided summarization, namely Multi-DYLE, which extensively generalizes DYLE to enable using a supervised extractor based on human-aligned extractive oracles. We further present an explainability-aware task, named “Explainable Evidence Extraction” (E3), which aims to automatically detect all evidence sentences that support a given summary. Experimental results on the QMSum dataset show that the proposed Multi-DYLE outperforms DYLE with gains of up to 3.13 in the ROUGE-1 score. We further present the initial results on the E3 task, under the settings using separate and joint evaluation metrics.
CITATION STYLE
Kim, H., Cho, M., & Na, S. H. (2023). ExplainMeetSum: A Dataset for Explainable Meeting Summarization Aligned with Human Intent. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (Vol. 1, pp. 13079–13098). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2023.acl-long.731
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