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Exploring Neural Models for Query-Focused Summarization

About

Query-focused summarization (QFS) aims to produce summaries that answer particular questions of interest, enabling greater user control and personalization. While recently released datasets, such as QMSum or AQuaMuSe, facilitate research efforts in QFS, the field lacks a comprehensive study of the broad space of applicable modeling methods. In this paper we conduct a systematic exploration of neural approaches to QFS, considering two general classes of methods: two-stage extractive-abstractive solutions and end-to-end models. Within those categories, we investigate existing models and explore strategies for transfer learning. We also present two modeling extensions that achieve state-of-the-art performance on the QMSum dataset, up to a margin of 3.38 ROUGE-1, 3.72 ROUGE2, and 3.28 ROUGE-L when combined with transfer learning strategies. Results from human evaluation suggest that the best models produce more comprehensive and factually consistent summaries compared to a baseline model. Code and checkpoints are made publicly available: https://github.com/salesforce/query-focused-sum.

Jesse Vig, Alexander R. Fabbri, Wojciech Kry\'sci\'nski, Chien-Sheng Wu, Wenhao Liu• 2021

Related benchmarks

TaskDatasetResultRank
Question AnsweringTriviaQA
Accuracy82.09
210
Question AnsweringPopQA
Accuracy33.67
186
Question AnsweringTriviaQA (test)
Accuracy76.73
121
Question AnsweringNQ
Accuracy44.27
108
Question AnsweringNQ (test)--
66
Question AnsweringHotpotQA (test)--
37
Question AnsweringASQA
StrEM37.81
27
Query-based meeting summarizationQMSum (test)
ROUGE-137.8
26
Question AnsweringMSMARCO
ROUGE-L22.67
15
Question AnsweringHotpotQA
Accuracy28.05
9
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