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Towards Interpretable and Efficient Automatic Reference-Based Summarization Evaluation (2303.03608v2)
Published 7 Mar 2023 in cs.CL
Abstract: Interpretability and efficiency are two important considerations for the adoption of neural automatic metrics. In this work, we develop strong-performing automatic metrics for reference-based summarization evaluation, based on a two-stage evaluation pipeline that first extracts basic information units from one text sequence and then checks the extracted units in another sequence. The metrics we developed include two-stage metrics that can provide high interpretability at both the fine-grained unit level and summary level, and one-stage metrics that achieve a balance between efficiency and interpretability. We make the developed tools publicly available at https://github.com/Yale-LILY/AutoACU.
- Yixin Liu (108 papers)
- Alexander R. Fabbri (34 papers)
- Yilun Zhao (59 papers)
- Pengfei Liu (191 papers)
- Shafiq Joty (187 papers)
- Chien-Sheng Wu (77 papers)
- Caiming Xiong (337 papers)
- Dragomir Radev (98 papers)