Hardening quantum machine learning against adversaries

被引:11
作者
Wiebe, Nathan [1 ]
Kumar, Ram Shankar Siva [1 ]
机构
[1] Microsoft Corp, One Microsoft Way, Redmond, WA 98052 USA
来源
NEW JOURNAL OF PHYSICS | 2018年 / 20卷
关键词
quantum computing; quantum machine learning; quantum algorithms; HAMILTONIAN SIMULATION;
D O I
10.1088/1367-2630/aae71a
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Security of machine learning has begun to become a serious issue for present day applications. An important question remaining is whether emerging quantum technologies will help or hinder the security of machine learning. Here we discuss a number of ways that quantum information can be used to help make quantum classifiers more secure or private. In particular, we demonstrate a form of robust principal component analysis that, under some circumstances, can provide an exponential speedup relative to robust methods used at present. To demonstrate this approach we introduce a linear combinations of unitaries Hamiltonian simulation method that we show functions when given an imprecise Hamiltonian oracle, which maybe of independent interest. We also introduce a new quantum approach for bagging and boosting that can use quantum superposition over the classifiers or splits of the training set to aggragate over many more models than would be possible classically. Finally, we provide a private form of k-means clustering that can be used to prevent an all powerful adversary from learning more than a small fraction of a bit from any user. These examples show the role that quantum technologies can play in the security of ML and vice versa. This illustrates that quantum computing can provide useful advantages to machine learning apart from speedups.
引用
收藏
页数:26
相关论文
共 50 条
  • [31] Quantum Machine Learning: Current State and Challenges
    Avramouli, Maria
    Savvas, Ilias K.
    Garani, Georgia
    Vasilaki, Anna
    25TH PAN-HELLENIC CONFERENCE ON INFORMATICS WITH INTERNATIONAL PARTICIPATION (PCI2021), 2021, : 397 - 402
  • [32] Define, refined and re-defined concepts of quantum machine learning : A review
    Chavan, Shradha
    Mulay, Preeti
    JOURNAL OF INFORMATION & OPTIMIZATION SCIENCES, 2024, 45 (05) : 1229 - 1262
  • [33] Quantum machine-learning phase prediction of high-entropy alloys
    Brown, Payden
    Zhuang, Houlong
    MATERIALS TODAY, 2023, 63 : 18 - 31
  • [34] Quantum Driven Machine Learning
    Shivani Saini
    PK Khosla
    Manjit Kaur
    Gurmohan Singh
    International Journal of Theoretical Physics, 2020, 59 : 4013 - 4024
  • [35] Quantum Driven Machine Learning
    Saini, Shivani
    Khosla, P. K.
    Kaur, Manjit
    Singh, Gurmohan
    INTERNATIONAL JOURNAL OF THEORETICAL PHYSICS, 2020, 59 (12) : 4013 - 4024
  • [36] HASM quantum machine learning
    Yue, Tianxiang
    Wu, Chenchen
    Liu, Yi
    Du, Zhengping
    Zhao, Na
    Jiao, Yimeng
    Xu, Zhe
    Shi, Wenjiao
    SCIENCE CHINA-EARTH SCIENCES, 2023, 66 (09) : 1937 - 1945
  • [37] Federated Quantum Machine Learning
    Chen, Samuel Yen-Chi
    Yoo, Shinjae
    ENTROPY, 2021, 23 (04)
  • [38] Reinforcement learning-based architecture search for quantum machine learning
    Rapp, Frederic
    Kreplin, David A.
    Huber, Marco F.
    Roth, Marco
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2025, 6 (01):
  • [39] Quantum adiabatic machine learning
    Kristen L. Pudenz
    Daniel A. Lidar
    Quantum Information Processing, 2013, 12 : 2027 - 2070
  • [40] Quantum Fair Machine Learning
    Perrier, Elija
    AIES '21: PROCEEDINGS OF THE 2021 AAAI/ACM CONFERENCE ON AI, ETHICS, AND SOCIETY, 2021, : 843 - 853