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Robust Learning Meets Generative Models: Can Proxy Distributions Improve
  Adversarial Robustness?

Robust Learning Meets Generative Models: Can Proxy Distributions Improve Adversarial Robustness?

19 April 2021
Vikash Sehwag
Saeed Mahloujifar
Tinashe Handina
Sihui Dai
Chong Xiang
M. Chiang
Prateek Mittal
    OOD
ArXivPDFHTML

Papers citing "Robust Learning Meets Generative Models: Can Proxy Distributions Improve Adversarial Robustness?"

28 / 28 papers shown
Title
MOS-Attack: A Scalable Multi-objective Adversarial Attack Framework
MOS-Attack: A Scalable Multi-objective Adversarial Attack Framework
Ping Guo
Cheng Gong
Xi Victoria Lin
Fei Liu
Zhichao Lu
Qingfu Zhang
Zhenkun Wang
AAML
36
0
0
13 Jan 2025
STBA: Towards Evaluating the Robustness of DNNs for Query-Limited
  Black-box Scenario
STBA: Towards Evaluating the Robustness of DNNs for Query-Limited Black-box Scenario
Renyang Liu
Kwok-Yan Lam
Wei Zhou
Sixing Wu
Jun Zhao
Dongting Hu
Mingming Gong
AAML
24
0
0
30 Mar 2024
Specification Overfitting in Artificial Intelligence
Specification Overfitting in Artificial Intelligence
Benjamin Roth
Pedro Henrique Luz de Araujo
Yuxi Xia
Saskia Kaltenbrunner
Christoph Korab
56
0
0
13 Mar 2024
ScAR: Scaling Adversarial Robustness for LiDAR Object Detection
ScAR: Scaling Adversarial Robustness for LiDAR Object Detection
Xiaohu Lu
H. Radha
AAML
3DPC
24
0
0
05 Dec 2023
Mixing Classifiers to Alleviate the Accuracy-Robustness Trade-Off
Mixing Classifiers to Alleviate the Accuracy-Robustness Trade-Off
Yatong Bai
Brendon G. Anderson
Somayeh Sojoudi
AAML
19
2
0
26 Nov 2023
Mitigating Adversarial Vulnerability through Causal Parameter Estimation
  by Adversarial Double Machine Learning
Mitigating Adversarial Vulnerability through Causal Parameter Estimation by Adversarial Double Machine Learning
Byung-Kwan Lee
Junho Kim
Yonghyun Ro
AAML
10
9
0
14 Jul 2023
Enhancing Adversarial Robustness via Score-Based Optimization
Enhancing Adversarial Robustness via Score-Based Optimization
Boya Zhang
Weijian Luo
Zhihua Zhang
DiffM
19
12
0
10 Jul 2023
Group-based Robustness: A General Framework for Customized Robustness in
  the Real World
Group-based Robustness: A General Framework for Customized Robustness in the Real World
Weiran Lin
Keane Lucas
Neo Eyal
Lujo Bauer
Michael K. Reiter
Mahmood Sharif
OOD
AAML
22
1
0
29 Jun 2023
How Deep Learning Sees the World: A Survey on Adversarial Attacks &
  Defenses
How Deep Learning Sees the World: A Survey on Adversarial Attacks & Defenses
Joana Cabral Costa
Tiago Roxo
Hugo Manuel Proença
Pedro R. M. Inácio
AAML
30
48
0
18 May 2023
Certified Zeroth-order Black-Box Defense with Robust UNet Denoiser
Certified Zeroth-order Black-Box Defense with Robust UNet Denoiser
Astha Verma
A. Subramanyam
Siddhesh Bangar
Naman Lal
R. Shah
Shiníchi Satoh
27
4
0
13 Apr 2023
MultiRobustBench: Benchmarking Robustness Against Multiple Attacks
MultiRobustBench: Benchmarking Robustness Against Multiple Attacks
Sihui Dai
Saeed Mahloujifar
Chong Xiang
Vikash Sehwag
Pin-Yu Chen
Prateek Mittal
AAML
OOD
14
7
0
21 Feb 2023
Characterizing the Optimal 0-1 Loss for Multi-class Classification with
  a Test-time Attacker
Characterizing the Optimal 0-1 Loss for Multi-class Classification with a Test-time Attacker
Sihui Dai
Wen-Luan Ding
A. Bhagoji
Daniel Cullina
Ben Y. Zhao
Haitao Zheng
Prateek Mittal
AAML
27
2
0
21 Feb 2023
Better Diffusion Models Further Improve Adversarial Training
Better Diffusion Models Further Improve Adversarial Training
Zekai Wang
Tianyu Pang
Chao Du
Min-Bin Lin
Weiwei Liu
Shuicheng Yan
DiffM
14
207
0
09 Feb 2023
Improving the Accuracy-Robustness Trade-Off of Classifiers via Adaptive
  Smoothing
Improving the Accuracy-Robustness Trade-Off of Classifiers via Adaptive Smoothing
Yatong Bai
Brendon G. Anderson
Aerin Kim
Somayeh Sojoudi
AAML
19
18
0
29 Jan 2023
Data Augmentation Alone Can Improve Adversarial Training
Data Augmentation Alone Can Improve Adversarial Training
Lin Li
Michael W. Spratling
16
49
0
24 Jan 2023
Alternating Objectives Generates Stronger PGD-Based Adversarial Attacks
Alternating Objectives Generates Stronger PGD-Based Adversarial Attacks
Nikolaos Antoniou
Efthymios Georgiou
Alexandros Potamianos
AAML
22
5
0
15 Dec 2022
Scoring Black-Box Models for Adversarial Robustness
Scoring Black-Box Models for Adversarial Robustness
Jian Vora
Pranay Reddy Samala
15
0
0
31 Oct 2022
DE-CROP: Data-efficient Certified Robustness for Pretrained Classifiers
DE-CROP: Data-efficient Certified Robustness for Pretrained Classifiers
Gaurav Kumar Nayak
Ruchit Rawal
Anirban Chakraborty
11
3
0
17 Oct 2022
Robust Models are less Over-Confident
Robust Models are less Over-Confident
Julia Grabinski
Paul Gavrikov
J. Keuper
M. Keuper
AAML
14
24
0
12 Oct 2022
Bag of Tricks for FGSM Adversarial Training
Bag of Tricks for FGSM Adversarial Training
Zichao Li
Li Liu
Zeyu Wang
Yuyin Zhou
Cihang Xie
AAML
14
6
0
06 Sep 2022
Two Heads are Better than One: Robust Learning Meets Multi-branch Models
Two Heads are Better than One: Robust Learning Meets Multi-branch Models
Dong Huang
Qi Bu
Yuhao Qing
Haowen Pi
Sen Wang
Heming Cui
OOD
AAML
16
0
0
17 Aug 2022
How many perturbations break this model? Evaluating robustness beyond
  adversarial accuracy
How many perturbations break this model? Evaluating robustness beyond adversarial accuracy
R. Olivier
Bhiksha Raj
AAML
29
5
0
08 Jul 2022
Semi-supervised Semantics-guided Adversarial Training for Trajectory
  Prediction
Semi-supervised Semantics-guided Adversarial Training for Trajectory Prediction
Ruochen Jiao
Xiangguo Liu
Takami Sato
Qi Alfred Chen
Qi Zhu
AAML
23
20
0
27 May 2022
Diffusion Models for Adversarial Purification
Diffusion Models for Adversarial Purification
Weili Nie
Brandon Guo
Yujia Huang
Chaowei Xiao
Arash Vahdat
Anima Anandkumar
WIGM
195
415
0
16 May 2022
Adversarial Robustness through the Lens of Convolutional Filters
Adversarial Robustness through the Lens of Convolutional Filters
Paul Gavrikov
J. Keuper
25
15
0
05 Apr 2022
Generating High Fidelity Data from Low-density Regions using Diffusion
  Models
Generating High Fidelity Data from Low-density Regions using Diffusion Models
Vikash Sehwag
C. Hazirbas
Albert Gordo
Firat Ozgenel
Cristian Canton Ferrer
DiffM
25
66
0
31 Mar 2022
Negative Data Augmentation
Negative Data Augmentation
Abhishek Sinha
Kumar Ayush
Jiaming Song
Burak Uzkent
Hongxia Jin
Stefano Ermon
29
72
0
09 Feb 2021
RobustBench: a standardized adversarial robustness benchmark
RobustBench: a standardized adversarial robustness benchmark
Francesco Croce
Maksym Andriushchenko
Vikash Sehwag
Edoardo Debenedetti
Nicolas Flammarion
M. Chiang
Prateek Mittal
Matthias Hein
VLM
217
674
0
19 Oct 2020
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