Structured Summary
Structured summarization research focuses on automatically generating concise and informative summaries from various text sources, prioritizing factual accuracy and coherence. Current efforts concentrate on improving the faithfulness and informativeness of Large Language Models (LLMs) for summarization, addressing issues like hallucination and bias, and developing more robust evaluation metrics beyond simple overlap measures. This field is crucial for efficiently managing the ever-increasing volume of digital information, with applications ranging from healthcare and finance to scientific literature review and improved accessibility of information. The development of more effective summarization techniques is driving advancements in both LLM architecture and evaluation methodologies.
Papers
Understanding Factual Errors in Summarization: Errors, Summarizers, Datasets, Error Detectors
Liyan Tang, Tanya Goyal, Alexander R. Fabbri, Philippe Laban, Jiacheng Xu, Semih Yavuz, Wojciech Kryściński, Justin F. Rousseau, Greg Durrett
Factorizing Content and Budget Decisions in Abstractive Summarization of Long Documents
Marcio Fonseca, Yftah Ziser, Shay B. Cohen
GisPy: A Tool for Measuring Gist Inference Score in Text
Pedram Hosseini, Christopher R. Wolfe, Mona Diab, David A. Broniatowski
CiteSum: Citation Text-guided Scientific Extreme Summarization and Domain Adaptation with Limited Supervision
Yuning Mao, Ming Zhong, Jiawei Han
Falsesum: Generating Document-level NLI Examples for Recognizing Factual Inconsistency in Summarization
Prasetya Ajie Utama, Joshua Bambrick, Nafise Sadat Moosavi, Iryna Gurevych