论文标题
量子鲁棒性验证:一种混合量子古典神经网络认证算法
Quantum Robustness Verification: A Hybrid Quantum-Classical Neural Network Certification Algorithm
论文作者
论文摘要
近年来,量子计算机和算法取得了重大进展,表明量子计算的前瞻性重要性(QC)。尤其是通过通过量子近似优化算法和使用ISING模型通过量子近似优化算法以及使用ISING模型的量子退火,尤其是近期量子计算机的应用领域,引起了很多关注。但是,在现实世界应用中证明比经典方法具有优势仍然是一个活跃的研究领域。在这项工作中,我们调查了Relu网络的鲁棒性验证,该验证涉及解决众多可变性的混合企业计划(MIPS)作为实际应用。通常,随着组合空间的成倍增长,完整的验证技术与大型网络相处,这意味着很难通过经典方法来验证现实的网络。为了减轻此问题,我们建议使用QC进行神经网络验证,并引入混合量子程序来计算可验证的证书。通过应用弯曲器的分解,我们将MIP分别分别为二进制的二进制优化和线性程序,分别通过量子和经典计算机求解。我们通过减少迭代的整体数量并限制所需的最大量子数来进一步改善现有的混合方法。我们表明,在模拟的环境中,我们的证书是合理的,并且提供了近似问题所需的最小量子数量的界限。最后,我们在模拟和量子硬件中评估我们的方法。
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 a 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 provide bounds on the minimum number of qubits necessary to approximate the problem. Finally, we evaluate our method within simulation and on quantum hardware.