Adversarial Learning Games with Deep Learning Models

被引:0
|
作者
Chivukula, Aneesh Sreevallabh [1 ]
Liu, Wei [1 ]
机构
[1] Univ Technol Sydney, Adv Analyt Inst, Sydney, NSW, Australia
关键词
Supervised learning; Data mining and knowledge discovery; Evolutionary learning; Adversarial learning; Deep learning; Genetic algorithms; Game theory;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep learning has been found to be vulnerable to changes in the data distribution. This means that inputs that have an imperceptibly and immeasurably small difference from training data correspond to a completely different class label in deep learning. Thus an existing deep learning network like a Convolutional Neural Network (CNN) is vulnerable to adversarial examples. We design an adversarial learning algorithm for supervised learning in general and CNNs in particular. Adversarial examples are generated by a game theoretic formulation on the performance of deep learning. In the game, the interaction between an intelligent adversary and deep learning model is a two-person sequential noncooperative Stackelberg game with stochastic payoff functions. The Stackelberg game is solved by the Nash equilibrium which is a pair of strategies (learner weights and genetic operations) from which there is no incentive for either learner or adversary to deviate. The algorithm performance is evaluated under different strategy spaces on MNIST handwritten digits data. We show that the Nash equilibrium leads to solutions robust to subsequent adversarial data manipulations. Results suggest that game theory and stochastic optimization algorithms can be used to study performance vulnerabilities in deep learning models.
引用
收藏
页码:2758 / 2767
页数:10
相关论文
共 50 条
  • [31] Inverse Reinforcement Learning for Adversarial Apprentice Games
    Lian, Bosen
    Xue, Wenqian
    Lewis, Frank L.
    Chai, Tianyou
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2023, 34 (08) : 4596 - 4609
  • [32] Static prediction games for adversarial learning problems
    Brückner, M. (mibrueck@cs.uni-potsdam.de), 1600, Microtome Publishing (13):
  • [33] Adversarial Attacks in Underwater Acoustic Target Recognition with Deep Learning Models
    Feng, Sheng
    Zhu, Xiaoqian
    Ma, Shuqing
    Lan, Qiang
    REMOTE SENSING, 2023, 15 (22)
  • [34] The Impact of Model Variations on the Robustness of Deep Learning Models in Adversarial Settings
    Juraev, Firuz
    Abuhamad, Mohammed
    Woo, Simon S.
    Thiruvathukal, George K.
    Abuhmed, Tamer
    2024 SILICON VALLEY CYBERSECURITY CONFERENCE, SVCC 2024, 2024,
  • [35] Impact of Adversarial Examples on Deep Learning Models for Biomedical Image Segmentation
    Ozbulak, Utku
    Van Messem, Arnout
    De Neve, Wesley
    MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2019, PT II, 2019, 11765 : 300 - 308
  • [36] Metamorphic Detection of Adversarial Examples in Deep Learning Models With Affine Transformations
    Mekala, Rohan Reddy
    Magnusson, Gudjon Einar
    Porter, Adam
    Lindvall, Mikael
    Diep, Madeline
    2019 IEEE/ACM 4TH INTERNATIONAL WORKSHOP ON METAMORPHIC TESTING (MET 2019), 2019, : 55 - 62
  • [37] Adversarial attack for deep-learning-based fault diagnosis models
    Ge, Yipei
    Wang, Huan
    Liu, Zhiliang
    2021 21ST INTERNATIONAL CONFERENCE ON SOFTWARE QUALITY, RELIABILITY AND SECURITY COMPANION (QRS-C 2021), 2021, : 757 - 761
  • [38] Exploiting epistemic uncertainty of the deep learning models to generate adversarial samples
    Tuna, Omer Faruk
    Catak, Ferhat Ozgur
    Eskil, M. Taner
    MULTIMEDIA TOOLS AND APPLICATIONS, 2022, 81 (08) : 11479 - 11500
  • [39] Addressing Adversarial Attacks in IoT Using Deep Learning AI Models
    Bommana, Sesibhushana Rao
    Veeramachaneni, Sreehari
    Ahmed, Syed Ershad
    Srinivas, M. B.
    IEEE ACCESS, 2025, 13 : 50437 - 50449
  • [40] ADVRET: An Adversarial Robustness Evaluating and Testing Platform for Deep Learning Models
    Ren, Fei
    Yang, Yonghui
    Hu, Chi
    Zhou, Yuyao
    Ma, Siyou
    2021 21ST INTERNATIONAL CONFERENCE ON SOFTWARE QUALITY, RELIABILITY AND SECURITY COMPANION (QRS-C 2021), 2021, : 9 - 14