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Looking Beyond Sentence-Level Natural Language Inference for Downstream
  Tasks

Looking Beyond Sentence-Level Natural Language Inference for Downstream Tasks

18 September 2020
Anshuman Mishra
Dhruvesh Patel
Aparna Vijayakumar
Xiang Li
Pavan Kapanipathi
Kartik Talamadupula
    RALM
ArXiv (abs)PDFHTML

Papers citing "Looking Beyond Sentence-Level Natural Language Inference for Downstream Tasks"

6 / 6 papers shown
Title
Valuable Hallucinations: Realizable Non-realistic Propositions
Valuable Hallucinations: Realizable Non-realistic Propositions
Qiucheng Chen
Bo Wang
LRM
268
2
0
16 Feb 2025
Don't Say What You Don't Know: Improving the Consistency of Abstractive
  Summarization by Constraining Beam Search
Don't Say What You Don't Know: Improving the Consistency of Abstractive Summarization by Constraining Beam SearchIEEE Games Entertainment Media Conference (GEM), 2022
Daniel King
Zejiang Shen
Nishant Subramani
Daniel S. Weld
Iz Beltagy
Doug Downey
HILM
233
33
0
16 Mar 2022
Investigating Crowdsourcing Protocols for Evaluating the Factual
  Consistency of Summaries
Investigating Crowdsourcing Protocols for Evaluating the Factual Consistency of Summaries
Xiangru Tang
Alexander R. Fabbri
Haoran Li
Ziming Mao
Griffin Adams
Borui Wang
Asli Celikyilmaz
Yashar Mehdad
Dragomir R. Radev
HILM
231
25
0
19 Sep 2021
Factual Consistency Evaluation for Text Summarization via Counterfactual
  Estimation
Factual Consistency Evaluation for Text Summarization via Counterfactual EstimationConference on Empirical Methods in Natural Language Processing (EMNLP), 2021
Yuexiang Xie
Fei Sun
Yang Deng
Yaliang Li
Bolin Ding
HILM
200
56
0
30 Aug 2021
The Factual Inconsistency Problem in Abstractive Text Summarization: A
  Survey
The Factual Inconsistency Problem in Abstractive Text Summarization: A Survey
Yi-Chong Huang
Xiachong Feng
Xiaocheng Feng
Bing Qin
HILM
373
117
0
30 Apr 2021
Can NLI Models Verify QA Systems' Predictions?
Can NLI Models Verify QA Systems' Predictions?Conference on Empirical Methods in Natural Language Processing (EMNLP), 2021
Jifan Chen
Eunsol Choi
Greg Durrett
248
58
0
18 Apr 2021
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