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  4. Quantum Robustness Verification: A Hybrid Quantum-Classical Neural Network Certification Algorithm
 
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2022
Conference Paper
Title

Quantum Robustness Verification: A Hybrid Quantum-Classical Neural Network Certification Algorithm

Abstract
In recent years, quantum computers and algorithms have made significant progress indicating the prospective importance of quantum computing (QC). Especially combinatorial optimization has gained a lot of attention as an application field for near-term quantum computers, both by using gate-based QC via the Quantum Approximate Optimization Algorithm and by quantum annealing using the Ising model. However, demonstrating an advantage over classical methods in real-world applications remains an active area of research. In this work, we investigate the robustness verification of ReLU networks, which involves solving many-variable mixed-integer programs (MIPs), as a practical application. Classically, complete verification techniques struggle with large networks as the combinatorial space grows exponentially, implying that realistic networks are difficult to be verified by classical methods. To alleviate this issue, we propose to use QC for neural network verification and introduce a hybrid quantum procedure to compute provable certificates. By applying Benders decomposition, we split the MIP into a quadratic unconstrained binary optimization and a linear program which are solved by quantum and classical computers, respectively. We further improve existing hybrid methods based on the Benders decomposition by reducing the overall number of iterations and placing a limit on the maximum number of qubits required. We show that, in a simulated environment, our certificate is sound, and provides bounds on the minimum number of qubits necessary to approximate the problem. Finally, we evaluate our method within simulations and on quantum hardware.
Author(s)
Franco, Nicola  
Fraunhofer-Institut für Kognitive Systeme IKS  
Wollschläger, Tom
Technische Universität München  
Gao, Nicholas
Technische Universität München  
Lorenz, Jeanette Miriam  orcid-logo
Fraunhofer-Institut für Kognitive Systeme IKS  
Günnemann, Stephan
Technische Universität München  
Mainwork
IEEE International Conference on Quantum Computing and Engineering, QCE 2022. Proceedings  
Conference
International Conference on Quantum Computing and Engineering 2022  
Open Access
File(s)
Download (590.51 KB)
Rights
Use according to copyright law
DOI
10.1109/QCE53715.2022.00033
10.24406/publica-561
Language
English
Fraunhofer-Institut für Kognitive Systeme IKS  
Fraunhofer Group
Fraunhofer-Verbund IUK-Technologie  
Keyword(s)
  • quantum computing

  • QC

  • machine learning

  • ML

  • robustness

  • robustness verification

  • adversarial robustness

  • hybrid quantum algorithm

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