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Rationalization through Concepts

Rationalization through Concepts

11 May 2021
Diego Antognini
Boi Faltings
    FAtt
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Papers citing "Rationalization through Concepts"

9 / 9 papers shown
Title
Towards Faithful Explanations: Boosting Rationalization with Shortcuts
  Discovery
Towards Faithful Explanations: Boosting Rationalization with Shortcuts Discovery
Linan Yue
Qi Liu
Yichao Du
Li Wang
Weibo Gao
Yanqing An
30
4
0
12 Mar 2024
Distinguish Before Answer: Generating Contrastive Explanation as
  Knowledge for Commonsense Question Answering
Distinguish Before Answer: Generating Contrastive Explanation as Knowledge for Commonsense Question Answering
Qianglong Chen
Guohai Xu
Mingshi Yan
Ji Zhang
Fei Huang
Luo Si
Yin Zhang
16
9
0
14 May 2023
Interlock-Free Multi-Aspect Rationalization for Text Classification
Interlock-Free Multi-Aspect Rationalization for Text Classification
Shuang Li
Diego Antognini
Boi Faltings
17
0
0
13 May 2022
What to Learn, and How: Toward Effective Learning from Rationales
What to Learn, and How: Toward Effective Learning from Rationales
Samuel Carton
Surya Kanoria
Chenhao Tan
24
22
0
30 Nov 2021
Understanding Interlocking Dynamics of Cooperative Rationalization
Understanding Interlocking Dynamics of Cooperative Rationalization
Mo Yu
Yang Zhang
Shiyu Chang
Tommi Jaakkola
18
41
0
26 Oct 2021
Interpreting Deep Learning Models in Natural Language Processing: A
  Review
Interpreting Deep Learning Models in Natural Language Processing: A Review
Xiaofei Sun
Diyi Yang
Xiaoya Li
Tianwei Zhang
Yuxian Meng
Han Qiu
Guoyin Wang
Eduard H. Hovy
Jiwei Li
17
44
0
20 Oct 2021
Invariant Rationalization
Invariant Rationalization
Shiyu Chang
Yang Zhang
Mo Yu
Tommi Jaakkola
179
201
0
22 Mar 2020
A causal framework for explaining the predictions of black-box
  sequence-to-sequence models
A causal framework for explaining the predictions of black-box sequence-to-sequence models
David Alvarez-Melis
Tommi Jaakkola
CML
227
201
0
06 Jul 2017
Learning Attitudes and Attributes from Multi-Aspect Reviews
Learning Attitudes and Attributes from Multi-Aspect Reviews
Julian McAuley
J. Leskovec
Dan Jurafsky
197
296
0
15 Oct 2012
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