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Robust Deep Reinforcement Learning through Adversarial Loss

Robust Deep Reinforcement Learning through Adversarial Loss

5 August 2020
Tuomas P. Oikarinen
Wang Zhang
Alexandre Megretski
Luca Daniel
Tsui-Wei Weng
    AAML
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Papers citing "Robust Deep Reinforcement Learning through Adversarial Loss"

50 / 55 papers shown
Title
Neural Fidelity Calibration for Informative Sim-to-Real Adaptation
Neural Fidelity Calibration for Informative Sim-to-Real Adaptation
Youwei Yu
Lantao Liu
29
0
0
11 Apr 2025
Robust Deep Reinforcement Learning in Robotics via Adaptive Gradient-Masked Adversarial Attacks
Robust Deep Reinforcement Learning in Robotics via Adaptive Gradient-Masked Adversarial Attacks
Zongyuan Zhang
Tianyang Duan
Zheng Lin
Dong Huang
Zihan Fang
...
Ling Xiong
Hongbin Liang
Heming Cui
Yong Cui
Yue Gao
AAML
50
2
0
26 Mar 2025
Model-Based Offline Reinforcement Learning with Adversarial Data Augmentation
Model-Based Offline Reinforcement Learning with Adversarial Data Augmentation
Hongye Cao
Fan Feng
Jing Huo
Shangdong Yang
Meng Fang
Tianpei Yang
Yang Gao
AAML
OffRL
55
0
0
26 Mar 2025
State-Aware Perturbation Optimization for Robust Deep Reinforcement Learning
State-Aware Perturbation Optimization for Robust Deep Reinforcement Learning
Zongyuan Zhang
Tianyang Duan
Zheng Lin
Dong Huang
Zihan Fang
Zekai Sun
Ling Xiong
Hongbin Liang
Heming Cui
Yong Cui
AAML
82
1
0
26 Mar 2025
RAT: Adversarial Attacks on Deep Reinforcement Agents for Targeted
  Behaviors
RAT: Adversarial Attacks on Deep Reinforcement Agents for Targeted Behaviors
Fengshuo Bai
Runze Liu
Yali Du
Ying Wen
Yaodong Yang
AAML
78
2
0
14 Dec 2024
Mitigating Adversarial Perturbations for Deep Reinforcement Learning via
  Vector Quantization
Mitigating Adversarial Perturbations for Deep Reinforcement Learning via Vector Quantization
T. Luu
Thanh Nguyen
Tee Joshua Tian Jin
Sungwoon Kim
Chang D. Yoo
AAML
21
0
0
04 Oct 2024
Learning Robust Policies via Interpretable Hamilton-Jacobi
  Reachability-Guided Disturbances
Learning Robust Policies via Interpretable Hamilton-Jacobi Reachability-Guided Disturbances
Hanyang Hu
Xilun Zhang
Xubo Lyu
Mo Chen
32
1
0
29 Sep 2024
Robust off-policy Reinforcement Learning via Soft Constrained Adversary
Robust off-policy Reinforcement Learning via Soft Constrained Adversary
Kosuke Nakanishi
Akihiro Kubo
Yuji Yasui
Shin Ishii
35
0
0
31 Aug 2024
On the Perturbed States for Transformed Input-robust Reinforcement
  Learning
On the Perturbed States for Transformed Input-robust Reinforcement Learning
T. Luu
Haeyong Kang
Matthew Groh
Thanh Nguyen
Chang D. Yoo
OOD
AAML
OffRL
21
0
0
31 Jul 2024
Breaking the Barrier: Enhanced Utility and Robustness in Smoothed DRL
  Agents
Breaking the Barrier: Enhanced Utility and Robustness in Smoothed DRL Agents
Chung-En Sun
Sicun Gao
Tsui-Wei Weng
AAML
18
2
0
26 Jun 2024
On Robust Reinforcement Learning with Lipschitz-Bounded Policy Networks
On Robust Reinforcement Learning with Lipschitz-Bounded Policy Networks
Nicholas H. Barbara
Ruigang Wang
I. Manchester
30
4
0
19 May 2024
Belief-Enriched Pessimistic Q-Learning against Adversarial State
  Perturbations
Belief-Enriched Pessimistic Q-Learning against Adversarial State Perturbations
Xiaolin Sun
Zizhan Zheng
OnRL
27
1
0
06 Mar 2024
Beyond Worst-case Attacks: Robust RL with Adaptive Defense via
  Non-dominated Policies
Beyond Worst-case Attacks: Robust RL with Adaptive Defense via Non-dominated Policies
Xiangyu Liu
Chenghao Deng
Yanchao Sun
Yongyuan Liang
Furong Huang
AAML
22
4
0
20 Feb 2024
Towards Optimal Adversarial Robust Q-learning with Bellman
  Infinity-error
Towards Optimal Adversarial Robust Q-learning with Bellman Infinity-error
Haoran Li
Zicheng Zhang
Wang Luo
Congying Han
Yudong Hu
Tiande Guo
Shichen Liao
AAML
21
2
0
03 Feb 2024
Robustness Verification of Deep Reinforcement Learning Based Control
  Systems using Reward Martingales
Robustness Verification of Deep Reinforcement Learning Based Control Systems using Reward Martingales
Dapeng Zhi
Peixin Wang
Cheng Chen
Min Zhang
13
0
0
15 Dec 2023
Improve Robustness of Reinforcement Learning against Observation
  Perturbations via $l_\infty$ Lipschitz Policy Networks
Improve Robustness of Reinforcement Learning against Observation Perturbations via l∞l_\inftyl∞​ Lipschitz Policy Networks
Buqing Nie
Jingtian Ji
Yangqing Fu
Yue Gao
29
2
0
14 Dec 2023
Robust Adversarial Reinforcement Learning via Bounded Rationality
  Curricula
Robust Adversarial Reinforcement Learning via Bounded Rationality Curricula
Aryaman Reddi
Maximilian Tölle
Jan Peters
Georgia Chalvatzaki
Carlo DÉramo
34
4
0
03 Nov 2023
Adjustable Robust Reinforcement Learning for Online 3D Bin Packing
Adjustable Robust Reinforcement Learning for Online 3D Bin Packing
Yuxin Pan
Yize Chen
Fangzhen Lin
OffRL
30
9
0
06 Oct 2023
FLARE: Fingerprinting Deep Reinforcement Learning Agents using Universal
  Adversarial Masks
FLARE: Fingerprinting Deep Reinforcement Learning Agents using Universal Adversarial Masks
Buse G. A. Tekgul
Nadarajah Asokan
AAML
13
1
0
27 Jul 2023
Game-Theoretic Robust Reinforcement Learning Handles Temporally-Coupled
  Perturbations
Game-Theoretic Robust Reinforcement Learning Handles Temporally-Coupled Perturbations
Yongyuan Liang
Yanchao Sun
Ruijie Zheng
Xiangyu Liu
Benjamin Eysenbach
T. Sandholm
Furong Huang
Stephen Marcus McAleer
OOD
35
0
0
22 Jul 2023
Enhancing the Robustness of QMIX against State-adversarial Attacks
Enhancing the Robustness of QMIX against State-adversarial Attacks
Weiran Guo
Guanjun Liu
Ziyuan Zhou
Ling Wang
Jiacun Wang
AAML
24
7
0
03 Jul 2023
Rethinking Adversarial Policies: A Generalized Attack Formulation and
  Provable Defense in RL
Rethinking Adversarial Policies: A Generalized Attack Formulation and Provable Defense in RL
Xiangyu Liu
Souradip Chakraborty
Yanchao Sun
Furong Huang
AAML
19
4
0
27 May 2023
Robust multi-agent coordination via evolutionary generation of auxiliary
  adversarial attackers
Robust multi-agent coordination via evolutionary generation of auxiliary adversarial attackers
Lei Yuan
Zifei Zhang
Ke Xue
Hao Yin
F. Chen
Cong Guan
Lihe Li
Chao Qian
Yang Yu
AAML
24
16
0
10 May 2023
Communication-Robust Multi-Agent Learning by Adaptable Auxiliary
  Multi-Agent Adversary Generation
Communication-Robust Multi-Agent Learning by Adaptable Auxiliary Multi-Agent Adversary Generation
Lei Yuan
F. Chen
Zhongzhan Zhang
Yang Yu
AAML
44
10
0
09 May 2023
Robust Multi-agent Communication via Multi-view Message Certification
Robust Multi-agent Communication via Multi-view Message Certification
Lei Yuan
T. Jiang
Lihe Li
F. Chen
Zongzhang Zhang
Yang Yu
27
2
0
07 May 2023
Toward Evaluating Robustness of Reinforcement Learning with Adversarial
  Policy
Toward Evaluating Robustness of Reinforcement Learning with Adversarial Policy
Jiawei Zhao
Xingjun Ma
Florian Schäfer
Xinyu Wang
Anima Anandkumar
Cong Wang
AAML
19
1
0
04 May 2023
Games for Artificial Intelligence Research: A Review and Perspectives
Games for Artificial Intelligence Research: A Review and Perspectives
Chengpeng Hu
Yunlong Zhao
Ziqi Wang
Haocheng Du
Jialin Liu
AI4CE
28
10
0
26 Apr 2023
Zero-shot Transfer Learning of Driving Policy via Socially Adversarial
  Traffic Flow
Zero-shot Transfer Learning of Driving Policy via Socially Adversarial Traffic Flow
Dongkun Zhang
Jintao Xue
Yuxiang Cui
Yunkai Wang
Eryun Liu
Wei Jing
Junbo Chen
R. Xiong
Yue Wang
27
0
0
25 Apr 2023
Regret-Based Defense in Adversarial Reinforcement Learning
Regret-Based Defense in Adversarial Reinforcement Learning
Roman Belaire
Pradeep Varakantham
Thanh Nguyen
David Lo
AAML
23
2
0
14 Feb 2023
Certifiably Robust Reinforcement Learning through Model-Based Abstract
  Interpretation
Certifiably Robust Reinforcement Learning through Model-Based Abstract Interpretation
Chenxi Yang
Greg Anderson
Swarat Chaudhuri
11
1
0
26 Jan 2023
Adversarial Robust Deep Reinforcement Learning Requires Redefining
  Robustness
Adversarial Robust Deep Reinforcement Learning Requires Redefining Robustness
Ezgi Korkmaz
8
26
0
17 Jan 2023
SoK: Adversarial Machine Learning Attacks and Defences in Multi-Agent
  Reinforcement Learning
SoK: Adversarial Machine Learning Attacks and Defences in Multi-Agent Reinforcement Learning
Maxwell Standen
Junae Kim
Claudia Szabo
AAML
27
5
0
11 Jan 2023
Certifying Safety in Reinforcement Learning under Adversarial
  Perturbation Attacks
Certifying Safety in Reinforcement Learning under Adversarial Perturbation Attacks
Junlin Wu
Hussein Sibai
Yevgeniy Vorobeychik
AAML
16
0
0
28 Dec 2022
A Survey on Reinforcement Learning Security with Application to
  Autonomous Driving
A Survey on Reinforcement Learning Security with Application to Autonomous Driving
Ambra Demontis
Maura Pintor
Luca Demetrio
Kathrin Grosse
Hsiao-Ying Lin
Chengfang Fang
Battista Biggio
Fabio Roli
AAML
29
4
0
12 Dec 2022
Efficient Adversarial Training without Attacking: Worst-Case-Aware
  Robust Reinforcement Learning
Efficient Adversarial Training without Attacking: Worst-Case-Aware Robust Reinforcement Learning
Yongyuan Liang
Yanchao Sun
Ruijie Zheng
Furong Huang
OOD
AAML
OffRL
20
47
0
12 Oct 2022
Distributionally Adaptive Meta Reinforcement Learning
Distributionally Adaptive Meta Reinforcement Learning
Anurag Ajay
Abhishek Gupta
Dibya Ghosh
Sergey Levine
Pulkit Agrawal
OOD
19
14
0
06 Oct 2022
Trustworthy Reinforcement Learning Against Intrinsic Vulnerabilities:
  Robustness, Safety, and Generalizability
Trustworthy Reinforcement Learning Against Intrinsic Vulnerabilities: Robustness, Safety, and Generalizability
Mengdi Xu
Zuxin Liu
Peide Huang
Wenhao Ding
Zhepeng Cen
Bo-wen Li
Ding Zhao
61
45
0
16 Sep 2022
Red Teaming with Mind Reading: White-Box Adversarial Policies Against RL
  Agents
Red Teaming with Mind Reading: White-Box Adversarial Policies Against RL Agents
Stephen Casper
Taylor Killian
Gabriel Kreiman
Dylan Hadfield-Menell
AAML
12
1
0
05 Sep 2022
Illusory Attacks: Information-Theoretic Detectability Matters in
  Adversarial Attacks
Illusory Attacks: Information-Theoretic Detectability Matters in Adversarial Attacks
Tim Franzmeyer
Stephen McAleer
João F. Henriques
Jakob N. Foerster
Philip H. S. Torr
Adel Bibi
Christian Schroeder de Witt
AAML
11
7
0
20 Jul 2022
Robust Reinforcement Learning in Continuous Control Tasks with
  Uncertainty Set Regularization
Robust Reinforcement Learning in Continuous Control Tasks with Uncertainty Set Regularization
Yuan Zhang
Jianhong Wang
Joschka Boedecker
26
3
0
05 Jul 2022
Certifiably Robust Policy Learning against Adversarial Communication in
  Multi-agent Systems
Certifiably Robust Policy Learning against Adversarial Communication in Multi-agent Systems
Yanchao Sun
Ruijie Zheng
Parisa Hassanzadeh
Yongyuan Liang
S. Feizi
Sumitra Ganesh
Furong Huang
AAML
21
10
0
21 Jun 2022
Robust Deep Reinforcement Learning through Bootstrapped Opportunistic
  Curriculum
Robust Deep Reinforcement Learning through Bootstrapped Opportunistic Curriculum
Junlin Wu
Yevgeniy Vorobeychik
11
20
0
21 Jun 2022
RoMFAC: A robust mean-field actor-critic reinforcement learning against
  adversarial perturbations on states
RoMFAC: A robust mean-field actor-critic reinforcement learning against adversarial perturbations on states
Ziyuan Zhou
Guanjun Liu
AAML
30
23
0
15 May 2022
Review of Metrics to Measure the Stability, Robustness and Resilience of
  Reinforcement Learning
Review of Metrics to Measure the Stability, Robustness and Resilience of Reinforcement Learning
L. Pullum
9
2
0
22 Mar 2022
COPA: Certifying Robust Policies for Offline Reinforcement Learning
  against Poisoning Attacks
COPA: Certifying Robust Policies for Offline Reinforcement Learning against Poisoning Attacks
Fan Wu
Linyi Li
Chejian Xu
Huan Zhang
B. Kailkhura
K. Kenthapadi
Ding Zhao
Bo-wen Li
AAML
OffRL
11
33
0
16 Mar 2022
User-Oriented Robust Reinforcement Learning
User-Oriented Robust Reinforcement Learning
Haoyi You
Beichen Yu
Haiming Jin
Zhaoxing Yang
Jiahui Sun
OffRL
19
0
0
15 Feb 2022
How Private Is Your RL Policy? An Inverse RL Based Analysis Framework
How Private Is Your RL Policy? An Inverse RL Based Analysis Framework
Kritika Prakash
Fiza Husain
P. Paruchuri
Sujit Gujar
OffRL
13
11
0
10 Dec 2021
Learning a subspace of policies for online adaptation in Reinforcement
  Learning
Learning a subspace of policies for online adaptation in Reinforcement Learning
Jean-Baptiste Gaya
Laure Soulier
Ludovic Denoyer
OffRL
19
15
0
11 Oct 2021
Understanding Adversarial Attacks on Observations in Deep Reinforcement
  Learning
Understanding Adversarial Attacks on Observations in Deep Reinforcement Learning
You Qiaoben
Chengyang Ying
Xinning Zhou
Hang Su
Jun Zhu
Bo Zhang
AAML
20
14
0
30 Jun 2021
CROP: Certifying Robust Policies for Reinforcement Learning through
  Functional Smoothing
CROP: Certifying Robust Policies for Reinforcement Learning through Functional Smoothing
Fan Wu
Linyi Li
Zijian Huang
Yevgeniy Vorobeychik
Ding Zhao
Bo-wen Li
AAML
OffRL
11
58
0
17 Jun 2021
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