English

What Have We Achieved on Text Summarization?

Computation and Language 2020-10-12 v1

Abstract

Deep learning has led to significant improvement in text summarization with various methods investigated and improved ROUGE scores reported over the years. However, gaps still exist between summaries produced by automatic summarizers and human professionals. Aiming to gain more understanding of summarization systems with respect to their strengths and limits on a fine-grained syntactic and semantic level, we consult the Multidimensional Quality Metric(MQM) and quantify 8 major sources of errors on 10 representative summarization models manually. Primarily, we find that 1) under similar settings, extractive summarizers are in general better than their abstractive counterparts thanks to strength in faithfulness and factual-consistency; 2) milestone techniques such as copy, coverage and hybrid extractive/abstractive methods do bring specific improvements but also demonstrate limitations; 3) pre-training techniques, and in particular sequence-to-sequence pre-training, are highly effective for improving text summarization, with BART giving the best results.

Keywords

Cite

@article{arxiv.2010.04529,
  title  = {What Have We Achieved on Text Summarization?},
  author = {Dandan Huang and Leyang Cui and Sen Yang and Guangsheng Bao and Kun Wang and Jun Xie and Yue Zhang},
  journal= {arXiv preprint arXiv:2010.04529},
  year   = {2020}
}

Comments

Accepted by EMNLP 2020

R2 v1 2026-06-23T19:12:24.373Z