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Theoretical evidence for adversarial robustness through randomization

Theoretical evidence for adversarial robustness through randomization

4 February 2019
Rafael Pinot
Laurent Meunier
Alexandre Araujo
H. Kashima
Florian Yger
Cédric Gouy-Pailler
Jamal Atif
    AAML
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Papers citing "Theoretical evidence for adversarial robustness through randomization"

15 / 15 papers shown
Title
A Survey of Neural Network Robustness Assessment in Image Recognition
A Survey of Neural Network Robustness Assessment in Image Recognition
Jie Wang
Jun Ai
Minyan Lu
Haoran Su
Dan Yu
Yutao Zhang
Junda Zhu
Jingyu Liu
AAML
30
3
0
12 Apr 2024
LipSim: A Provably Robust Perceptual Similarity Metric
LipSim: A Provably Robust Perceptual Similarity Metric
Sara Ghazanfari
Alexandre Araujo
P. Krishnamurthy
Farshad Khorrami
Siddharth Garg
26
5
0
27 Oct 2023
Pre-trained Encoders in Self-Supervised Learning Improve Secure and
  Privacy-preserving Supervised Learning
Pre-trained Encoders in Self-Supervised Learning Improve Secure and Privacy-preserving Supervised Learning
Hongbin Liu
Wenjie Qu
Jinyuan Jia
Neil Zhenqiang Gong
SSL
28
6
0
06 Dec 2022
Enhancing Quantum Adversarial Robustness by Randomized Encodings
Enhancing Quantum Adversarial Robustness by Randomized Encodings
Weiyuan Gong
D. Yuan
Weikang Li
D. Deng
AAML
19
19
0
05 Dec 2022
Towards Evading the Limits of Randomized Smoothing: A Theoretical
  Analysis
Towards Evading the Limits of Randomized Smoothing: A Theoretical Analysis
Raphael Ettedgui
Alexandre Araujo
Rafael Pinot
Y. Chevaleyre
Jamal Atif
AAML
32
3
0
03 Jun 2022
Provably Efficient Black-Box Action Poisoning Attacks Against
  Reinforcement Learning
Provably Efficient Black-Box Action Poisoning Attacks Against Reinforcement Learning
Guanlin Liu
Lifeng Lai
AAML
30
34
0
09 Oct 2021
ROPUST: Improving Robustness through Fine-tuning with Photonic
  Processors and Synthetic Gradients
ROPUST: Improving Robustness through Fine-tuning with Photonic Processors and Synthetic Gradients
Alessandro Cappelli
Julien Launay
Laurent Meunier
Ruben Ohana
Iacopo Poli
AAML
13
4
0
06 Jul 2021
Mixed Nash Equilibria in the Adversarial Examples Game
Mixed Nash Equilibria in the Adversarial Examples Game
Laurent Meunier
M. Scetbon
Rafael Pinot
Jamal Atif
Y. Chevaleyre
AAML
15
29
0
13 Feb 2021
A Le Cam Type Bound for Adversarial Learning and Applications
A Le Cam Type Bound for Adversarial Learning and Applications
Qiuling Xu
Kevin Bello
Jean Honorio
AAML
16
1
0
01 Jul 2020
Calibrated Surrogate Losses for Adversarially Robust Classification
Calibrated Surrogate Losses for Adversarially Robust Classification
Han Bao
Clayton Scott
Masashi Sugiyama
16
45
0
28 May 2020
Learn2Perturb: an End-to-end Feature Perturbation Learning to Improve
  Adversarial Robustness
Learn2Perturb: an End-to-end Feature Perturbation Learning to Improve Adversarial Robustness
Ahmadreza Jeddi
M. Shafiee
Michelle Karg
C. Scharfenberger
A. Wong
OOD
AAML
52
63
0
02 Mar 2020
Towards Rapid and Robust Adversarial Training with One-Step Attacks
Towards Rapid and Robust Adversarial Training with One-Step Attacks
Leo Schwinn
René Raab
Björn Eskofier
AAML
25
6
0
24 Feb 2020
A unified view on differential privacy and robustness to adversarial
  examples
A unified view on differential privacy and robustness to adversarial examples
Rafael Pinot
Florian Yger
Cédric Gouy-Pailler
Jamal Atif
AAML
19
17
0
19 Jun 2019
Adversarial examples from computational constraints
Adversarial examples from computational constraints
Sébastien Bubeck
Eric Price
Ilya P. Razenshteyn
AAML
62
230
0
25 May 2018
Adversarial examples in the physical world
Adversarial examples in the physical world
Alexey Kurakin
Ian Goodfellow
Samy Bengio
SILM
AAML
284
5,835
0
08 Jul 2016
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