论文标题
高能物理学中的量子机学习的事件分类
Event Classification with Quantum Machine Learning in High-Energy Physics
论文作者
论文摘要
我们介绍了利用机器学习的量子算法的研究,以从背景事件中对感兴趣的事件进行分类,这是高能物理学中最具代表性的机器学习应用之一。我们专注于差异量子方法,以了解输入数据的属性,并使用模拟器和量子计算设备评估事件分类的性能。基于增强的否定树和使用经典计算机的深神经网络的标准多变量分类技术的性能与标准多变量分类技术进行比较,这表明量子算法在输入变量数量和训练样品大小的考虑范围内与标准技术具有可比性的性能。用量子计算机测试了变分量子算法,表明对背景的有趣事件的歧视是可行的。讨论了在学习过程中使用带有扩展门结构的量子回路观察到的特征行为,以及当前表现对高能物理实验中应用的影响。
We present studies of quantum algorithms exploiting machine learning to classify events of interest from background events, one of the most representative machine learning applications in high-energy physics. We focus on variational quantum approach to learn the properties of input data and evaluate the performance of the event classification using both simulators and quantum computing devices. Comparison of the performance with standard multi-variate classification techniques based on a boosted-decision tree and a deep neural network using classical computers shows that the quantum algorithm has comparable performance with the standard techniques at the considered ranges of the number of input variables and the size of training samples. The variational quantum algorithm is tested with quantum computers, demonstrating that the discrimination of interesting events from background is feasible. Characteristic behaviors observed during a learning process using quantum circuits with extended gate structures are discussed, as well as the implications of the current performance to the application in high-energy physics experiments.