Improving Factuality of Abstractive Summarization without Sacrificing Summary Quality
Dixit, Tanay, Wang, Fei, Chen, Muhao
–arXiv.org Artificial Intelligence
Improving factual consistency of abstractive summarization has been a widely studied topic. However, most of the prior works on training factuality-aware models have ignored the negative effect it has on summary quality. We propose EFACTSUM (i.e., Effective Factual Summarization), a candidate summary generation and ranking technique to improve summary factuality without sacrificing summary quality. We show that using a contrastive learning framework with our refined candidate summaries leads to significant gains on both factuality and similarity-based metrics. Specifically, we propose a ranking strategy in which we effectively combine two metrics, thereby preventing any conflict during training. Models trained using our approach show up to 6 points of absolute improvement over the base model with respect to FactCC on XSUM and 11 points on CNN/DM, without negatively affecting either similarity-based metrics or absractiveness.
arXiv.org Artificial Intelligence
May-24-2023
- Country:
- Asia > Middle East
- Republic of Türkiye (0.29)
- Europe (1.00)
- North America > United States (1.00)
- Asia > Middle East
- Genre:
- Research Report (1.00)
- Industry:
- Banking & Finance (1.00)
- Government
- Military (0.68)
- Regional Government (0.94)
- Technology: