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Learning to Attack: Towards Textual Adversarial Attacking in Real-world
  Situations

Learning to Attack: Towards Textual Adversarial Attacking in Real-world Situations

19 September 2020
Yuan Zang
Bairu Hou
Fanchao Qi
Zhiyuan Liu
Xiaojun Meng
Maosong Sun
ArXivPDFHTML

Papers citing "Learning to Attack: Towards Textual Adversarial Attacking in Real-world Situations"

5 / 5 papers shown
Title
Why Should Adversarial Perturbations be Imperceptible? Rethink the
  Research Paradigm in Adversarial NLP
Why Should Adversarial Perturbations be Imperceptible? Rethink the Research Paradigm in Adversarial NLP
Yangyi Chen
Hongcheng Gao
Ganqu Cui
Fanchao Qi
Longtao Huang
Zhiyuan Liu
Maosong Sun
SILM
17
45
0
19 Oct 2022
MedAttacker: Exploring Black-Box Adversarial Attacks on Risk Prediction
  Models in Healthcare
MedAttacker: Exploring Black-Box Adversarial Attacks on Risk Prediction Models in Healthcare
Muchao Ye
Junyu Luo
Guanjie Zheng
Cao Xiao
Ting Wang
Fenglong Ma
AAML
24
3
0
11 Dec 2021
Mind the Style of Text! Adversarial and Backdoor Attacks Based on Text
  Style Transfer
Mind the Style of Text! Adversarial and Backdoor Attacks Based on Text Style Transfer
Fanchao Qi
Yangyi Chen
Xurui Zhang
Mukai Li
Zhiyuan Liu
Maosong Sun
AAML
SILM
82
175
0
14 Oct 2021
Generating Natural Language Adversarial Examples
Generating Natural Language Adversarial Examples
M. Alzantot
Yash Sharma
Ahmed Elgohary
Bo-Jhang Ho
Mani B. Srivastava
Kai-Wei Chang
AAML
245
914
0
21 Apr 2018
Adversarial Example Generation with Syntactically Controlled Paraphrase
  Networks
Adversarial Example Generation with Syntactically Controlled Paraphrase Networks
Mohit Iyyer
John Wieting
Kevin Gimpel
Luke Zettlemoyer
AAML
GAN
205
711
0
17 Apr 2018
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