Litcius/Paper detail

Faithful or Extractive? On Mitigating the Faithfulness-Abstractiveness Trade-off in Abstractive Summarization

Faisal Ladhak, Esin Durmus, He He, Claire Cardie, Kathleen McKeown

2022Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)47 citationsDOIOpen Access PDF

Abstract

Despite recent progress in abstractive summarization, systems still suffer from faithfulness errors. While prior work has proposed models that improve faithfulness, it is unclear whether the improvement comes from an increased level of extractiveness of the model outputs as one naive way to improve faithfulness is to make summarization models more extractive. In this work, we present a framework for evaluating the effective faithfulness of summarization systems, by generating a faithfulnessabstractiveness trade-off curve that serves as a control at different operating points on the abstractiveness spectrum. We then show that the baseline system as well as recently proposed methods for improving faithfulness, fail to consistently improve over the control at the same level of abstractiveness. Finally, we learn a selector to identify the most faithful and abstractive summary for a given document, and show that this system can attain higher faithfulness scores in human evaluations while being more abstractive than the baseline system on two datasets. Moreover, we show that our system is able to achieve a better faithfulnessabstractiveness trade-off than the control at the same level of abstractiveness.

Topics & Concepts

Automatic summarizationComputer scienceBaseline (sea)Control (management)Artificial intelligenceMachine learningNatural language processingGeologyOceanographyTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques