论文标题

量子分类器的鲁棒性验证

Robustness Verification of Quantum Classifiers

论文作者

Guan, Ji, Fang, Wang, Ying, Mingsheng

论文摘要

机器学习算法的几种重要模型已成功地推广到量子世界,并有可能加快培训经典分类器和对量子物理学的数据分析的应用,这些分析可以在不久的将来的量子计算机上实施。但是,量子噪声是量子机学习实际实施的主要障碍。在这项工作中,我们定义了一个正式的框架,用于稳健性验证和分析量子机器学习算法针对噪音。得出了强大的结合,并开发了一种算法来检查量子机学习算法在量子训练数据方面是否鲁棒。特别是,该算法可以在检查过程中找到对抗性示例。我们的方法是在Google的Tensorflow量子上实现的,可以验证量子机学习算法的鲁棒性,相对于来自周围环境的噪声的微小干扰。实验结果证实了我们可靠的界限和算法的有效性,包括量子位分类为“ Hello World”例子,量子相识别和聚类的激发检测,从现实世界中棘手的物理问题中检测以及从古典世界对MNIST的分类。

Several important models of machine learning algorithms have been successfully generalized to the quantum world, with potential speedup to training classical classifiers and applications to data analytics in quantum physics that can be implemented on the near future quantum computers. However, quantum noise is a major obstacle to the practical implementation of quantum machine learning. In this work, we define a formal framework for the robustness verification and analysis of quantum machine learning algorithms against noises. A robust bound is derived and an algorithm is developed to check whether or not a quantum machine learning algorithm is robust with respect to quantum training data. In particular, this algorithm can find adversarial examples during checking. Our approach is implemented on Google's TensorFlow Quantum and can verify the robustness of quantum machine learning algorithms with respect to a small disturbance of noises, derived from the surrounding environment. The effectiveness of our robust bound and algorithm is confirmed by the experimental results, including quantum bits classification as the "Hello World" example, quantum phase recognition and cluster excitation detection from real world intractable physical problems, and the classification of MNIST from the classical world.

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