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Evaluating and Characterizing Human Rationales

Evaluating and Characterizing Human Rationales

9 October 2020
Samuel Carton
Anirudh Rathore
Chenhao Tan
ArXivPDFHTML

Papers citing "Evaluating and Characterizing Human Rationales"

17 / 17 papers shown
Title
Counterfactuals As a Means for Evaluating Faithfulness of Attribution Methods in Autoregressive Language Models
Counterfactuals As a Means for Evaluating Faithfulness of Attribution Methods in Autoregressive Language Models
Sepehr Kamahi
Yadollah Yaghoobzadeh
53
0
0
21 Aug 2024
Explanation Regularisation through the Lens of Attributions
Explanation Regularisation through the Lens of Attributions
Pedro Ferreira
Wilker Aziz
Ivan Titov
46
1
0
23 Jul 2024
Evaluating Saliency Explanations in NLP by Crowdsourcing
Evaluating Saliency Explanations in NLP by Crowdsourcing
Xiaotian Lu
Jiyi Li
Zhen Wan
Xiaofeng Lin
Koh Takeuchi
Hisashi Kashima
XAI
FAtt
LRM
27
1
0
17 May 2024
Situated Natural Language Explanations
Situated Natural Language Explanations
Zining Zhu
Hao Jiang
Jingfeng Yang
Sreyashi Nag
Chao Zhang
Jie Huang
Yifan Gao
Frank Rudzicz
Bing Yin
LRM
44
1
0
27 Aug 2023
Beyond Labels: Empowering Human Annotators with Natural Language
  Explanations through a Novel Active-Learning Architecture
Beyond Labels: Empowering Human Annotators with Natural Language Explanations through a Novel Active-Learning Architecture
Bingsheng Yao
Ishan Jindal
Lucian Popa
Yannis Katsis
Sayan Ghosh
...
Yuxuan Lu
Shashank Srivastava
Yunyao Li
James A. Hendler
Dakuo Wang
34
10
0
22 May 2023
Are Human Explanations Always Helpful? Towards Objective Evaluation of
  Human Natural Language Explanations
Are Human Explanations Always Helpful? Towards Objective Evaluation of Human Natural Language Explanations
Bingsheng Yao
Prithviraj Sen
Lucian Popa
James A. Hendler
Dakuo Wang
XAI
ELM
FAtt
25
10
0
04 May 2023
Towards Human-Centred Explainability Benchmarks For Text Classification
Towards Human-Centred Explainability Benchmarks For Text Classification
Viktor Schlegel
Erick Mendez Guzman
R. Batista-Navarro
20
5
0
10 Nov 2022
XMD: An End-to-End Framework for Interactive Explanation-Based Debugging
  of NLP Models
XMD: An End-to-End Framework for Interactive Explanation-Based Debugging of NLP Models
Dong-Ho Lee
Akshen Kadakia
Brihi Joshi
Aaron Chan
Ziyi Liu
...
Takashi Shibuya
Ryosuke Mitani
Toshiyuki Sekiya
Jay Pujara
Xiang Ren
LRM
40
9
0
30 Oct 2022
ferret: a Framework for Benchmarking Explainers on Transformers
ferret: a Framework for Benchmarking Explainers on Transformers
Giuseppe Attanasio
Eliana Pastor
C. Bonaventura
Debora Nozza
33
30
0
02 Aug 2022
UNIREX: A Unified Learning Framework for Language Model Rationale
  Extraction
UNIREX: A Unified Learning Framework for Language Model Rationale Extraction
Aaron Chan
Maziar Sanjabi
Lambert Mathias
L Tan
Shaoliang Nie
Xiaochang Peng
Xiang Ren
Hamed Firooz
41
41
0
16 Dec 2021
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
45
22
0
30 Nov 2021
Few-Shot Self-Rationalization with Natural Language Prompts
Few-Shot Self-Rationalization with Natural Language Prompts
Ana Marasović
Iz Beltagy
Doug Downey
Matthew E. Peters
LRM
26
106
0
16 Nov 2021
On the Diversity and Limits of Human Explanations
On the Diversity and Limits of Human Explanations
Chenhao Tan
19
31
0
22 Jun 2021
Flexible Instance-Specific Rationalization of NLP Models
Flexible Instance-Specific Rationalization of NLP Models
G. Chrysostomou
Nikolaos Aletras
31
14
0
16 Apr 2021
Local Interpretations for Explainable Natural Language Processing: A
  Survey
Local Interpretations for Explainable Natural Language Processing: A Survey
Siwen Luo
Hamish Ivison
S. Han
Josiah Poon
MILM
33
48
0
20 Mar 2021
Towards Unifying Feature Attribution and Counterfactual Explanations:
  Different Means to the Same End
Towards Unifying Feature Attribution and Counterfactual Explanations: Different Means to the Same End
R. Mothilal
Divyat Mahajan
Chenhao Tan
Amit Sharma
FAtt
CML
27
99
0
10 Nov 2020
e-SNLI: Natural Language Inference with Natural Language Explanations
e-SNLI: Natural Language Inference with Natural Language Explanations
Oana-Maria Camburu
Tim Rocktaschel
Thomas Lukasiewicz
Phil Blunsom
LRM
260
622
0
04 Dec 2018
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