Explaining quantum circuits with Shapley values: towards explainable quantum machine learning

被引:0
|
作者
Heese, Raoul [1 ]
Gerlach, Thore [2 ]
Muecke, Sascha [3 ]
Mueller, Sabine [1 ]
Jakobs, Matthias [3 ]
Piatkowski, Nico [2 ]
机构
[1] Fraunhofer ITWM, Fraunhofer Pl 1, D-67663 Kaiserslautern, Germany
[2] Fraunhofer IAIS, Schloss Birlinghoven 1, D-53757 St Augustin, Germany
[3] TU Dortmund, August Schmidt Str 1, D-44227 Dortmund, Germany
关键词
Quantum machine learning; Explainable machine learning; Shapley values; NEURAL-NETWORKS;
D O I
10.1007/s42484-025-00254-8
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Methods of artificial intelligence (AI) and especially machine learning (ML) have been growing ever more complex, and at the same time have more and more impact on people's lives. This leads to explainable AI (XAI) manifesting itself as an important research field that helps humans to better comprehend ML systems. In parallel, quantum machine learning (QML) is emerging with the ongoing improvement of quantum computing hardware combined with its increasing availability via cloud services. QML enables quantum-enhanced ML in which quantum mechanics is exploited to facilitate ML tasks, typically in the form of quantum-classical hybrid algorithms that combine quantum and classical resources. Quantum gates constitute the building blocks of gate-based quantum hardware and form circuits that can be used for quantum computations. For QML applications, quantum circuits are typically parameterized and their parameters are optimized classically such that a suitably defined objective function is minimized. Inspired by XAI, we raise the question of the explainability of such circuits by quantifying the importance of (groups of) gates for specific goals. To this end, we apply the well-established concept of Shapley values. The resulting attributions can be interpreted as explanations for why a specific circuit works well for a given task, improving the understanding of how to construct parameterized (or variational) quantum circuits, and fostering their human interpretability in general. An experimental evaluation on simulators and two superconducting quantum hardware devices demonstrates the benefits of the proposed framework for classification, generative modeling, transpilation, and optimization. Furthermore, our results shed some light on the role of specific gates in popular QML approaches.
引用
收藏
页数:33
相关论文
共 50 条
  • [1] Towards Explainable Quantum Machine Learning for Mobile Malware Detection and Classification
    Mercaldo, Francesco
    Ciaramella, Giovanni
    Iadarola, Giacomo
    Storto, Marco
    Martinelli, Fabio
    Santone, Antonella
    APPLIED SCIENCES-BASEL, 2022, 12 (23):
  • [2] Explaining Reinforcement Learning with Shapley Values
    Beechey, Daniel
    Smith, Thomas M. S.
    Simsek, Ozgur
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 202, 2023, 202
  • [3] Explainable Prediction of Acute Myocardial Infarction Using Machine Learning and Shapley Values
    Ibrahim, Lujain
    Mesinovic, Munib
    Yang, Kai-Wen
    Eid, Mohamad A.
    IEEE ACCESS, 2020, 8 : 210410 - 210417
  • [4] Quantum geometric machine learning for quantum circuits and control
    Perrier, Elija
    Tao, Dacheng
    Ferrie, Chris
    NEW JOURNAL OF PHYSICS, 2020, 22 (10)
  • [5] Collective eXplainable AI: Explaining Cooperative Strategies and Agent Contribution in Multiagent Reinforcement Learning With Shapley Values
    Heuillet, Alexandre
    Couthouis, Fabien
    Diaz-Rodriguez, Natalia
    IEEE COMPUTATIONAL INTELLIGENCE MAGAZINE, 2022, 17 (01) : 59 - 71
  • [6] Exploring Quantum Machine Learning for Explainable Malware Detection
    Ciaramella, Giovanni
    Martinelli, Fabio
    Mercaldo, Francesco
    Santone, Antonella
    2023 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, IJCNN, 2023,
  • [7] Explaining a Machine-Learning Lane Change Model With Maximum Entropy Shapley Values
    Li, Meng
    Wang, Yulei
    Sun, Hengyang
    Cui, Zhihao
    Huang, Yanjun
    Chen, Hong
    IEEE TRANSACTIONS ON INTELLIGENT VEHICLES, 2023, 8 (06): : 3620 - 3628
  • [8] Parameterized quantum circuits as machine learning models
    Benedetti, Marcello
    Lloyd, Erika
    Sack, Stefan
    Fiorentini, Mattia
    QUANTUM SCIENCE AND TECHNOLOGY, 2019, 4 (04)
  • [9] Machine Learning of Noise-Resilient Quantum Circuits
    Cincio, Lukasz
    Rudinger, Kenneth
    Sarovar, Mohan
    Coles, Patrick J.
    PRX QUANTUM, 2021, 2 (01):
  • [10] Towards quantum machine learning with tensor networks
    Huggins, William
    Patil, Piyush
    Mitchell, Bradley
    Whaley, K. Birgitta
    Stoudenmire, E. Miles
    QUANTUM SCIENCE AND TECHNOLOGY, 2019, 4 (02)