Bayesian Graph Representation Learning for Adversarial Patch Detection

被引:0
|
作者
Berenbeim, Alexander M. [1 ]
Wei, Alexander V. [1 ]
Cobb, Adam [2 ]
Roy, Anirban [2 ]
Jha, Susmit [2 ]
Bastian, Nathaniel D. [1 ]
机构
[1] United States Mil Acad, Army Cyber Inst, West Point, NY USA
[2] SRI Int, Comp Sci Lab, Menlo Pk, CA USA
来源
ASSURANCE AND SECURITY FOR AI-ENABLED SYSTEMS | 2024年 / 13054卷
关键词
Graph Representation Learning; Uncertainty Quantification; Adversarial Patch Detection;
D O I
10.1117/12.3013128
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Representing context, reasoning within contexts, and providing quantitative assessments of machine learning (ML) model certainty are all tasks of fundamental importance for secure, interpretable, and reliable model development. Recent enthusiasm regarding generative ML models has highlighted the importance of representing context, which is contingent on relevant and contextual features of data and model predictions are unreliable on out-of-context inputs. Herein, we develop the theory of graph representation learning (GRL) to extend to Bayesian Graph Neural Networks and to incorporate various forms of uncertainty quantification to improve model development and application in the presence of adversarial attacks. Within this framework, we approach the challenge of adversarial patch detection using a synthesized dataset consisting of images from the APRICOT and COCO datasets to study various binary classification models for patch detection. We present GRL models with two layers of edge convolution that are capable of detecting patches with up to 93.5% accuracy. Further, we find evidence supporting the use of the certainty and competence framework for model predictions as a tool for detecting patches, particularly when the former is included as a model feature in graph neural networks.
引用
收藏
页数:17
相关论文
共 50 条
  • [41] Graph representation learning via redundancy reduction
    He, Mengyao
    Zhao, Qingqing
    Zhang, Han
    Kang, Chuanze
    Li, Wei
    Han, Mingjing
    NEUROCOMPUTING, 2023, 533 : 161 - 177
  • [42] Graph Representation Learning for Similarity Stocks Analysis
    Zhang, Boyao
    Yang, Chao
    Zhang, Haikuo
    Wang, Zongguo
    Sun, Jingqi
    Wang, Lihua
    Zhao, Yonghua
    Wang, Yangang
    JOURNAL OF SIGNAL PROCESSING SYSTEMS FOR SIGNAL IMAGE AND VIDEO TECHNOLOGY, 2022, 94 (11): : 1283 - 1292
  • [43] Graph representation learning for road type classification
    Gharaee, Zahra
    Kowshik, Shreyas
    Stromann, Oliver
    Felsberg, Michael
    PATTERN RECOGNITION, 2021, 120
  • [44] Dual-decoder graph autoencoder for unsupervised graph representation learning
    Sun, Dengdi
    Li, Dashuang
    Ding, Zhuanlian
    Zhang, Xingyi
    Tang, Jin
    KNOWLEDGE-BASED SYSTEMS, 2021, 234
  • [45] Graph Representation and Prototype Learning for webly supervised
    Lin, Jiantao
    Chen, Tianshui
    Chen, Yingcong
    Yang, Zhijing
    Gao, Yuefang
    PATTERN RECOGNITION LETTERS, 2024, 183 : 78 - 85
  • [46] Understanding Negative Sampling in Graph Representation Learning
    Yang, Zhen
    Ding, Ming
    Zhou, Chang
    Yang, Hongxia
    Zhou, Jingren
    Tang, Jie
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 1666 - 1676
  • [47] Graph Representation Learning Beyond Node and Homophily
    Li, You
    Lin, Bei
    Luo, Binli
    Gui, Ning
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2023, 35 (05) : 4880 - 4893
  • [48] Massively Parallel Graph Drawing and Representation Learning
    Boehm, Christian
    Plant, Claudia
    2020 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2020, : 609 - 616
  • [49] Automated Graph Representation Learning for Node Classification
    Sun, Junwei
    Wang, Bai
    Wu, Bin
    2021 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2021,
  • [50] CommPOOL: An interpretable graph pooling framework for hierarchical graph representation learning
    Tang, Haoteng
    Ma, Guixiang
    He, Lifang
    Huang, Heng
    Zhan, Liang
    NEURAL NETWORKS, 2021, 143 : 669 - 677