Back to Search Start Over

PROM: A Phrase-level Copying Mechanism with Pre-training for Abstractive Summarization

Authors :
Ma, Xinbei
Gong, Yeyun
He, Pengcheng
Zhao, Hai
Duan, Nan
Publication Year :
2023

Abstract

Based on the remarkable achievements of pre-trained language models in abstractive summarization, the copying mechanism has proved helpful by improving the factuality, stability, and overall performance. This work proposes PROM, a new PhRase-level cOpying Mechanism that enhances attention on n-grams, which can be applied to zero-shot summarization with pre-training. PROM adds an indicator layer to explicitly pick up tokens in n-gram that can be copied from the source, and calculates an auxiliary loss for the copying prediction. Empirical studies show that PROM makes significant improvements in fine-tuning on benchmarks. In zero-shot setting, PROM is utilized in the self-supervised pre-training on raw corpora and provides new general baselines on a wide range of summarization datasets. Further analysis shows that PROM performs more reasonable copying and contributes to faithfulness.<br />Comment: Accepted by COLING2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.06647
Document Type :
Working Paper