论文标题
用量子增强的支持向量机重建带电的粒子轨道段
Reconstructing charged particle track segments with a quantum-enhanced support vector machine
论文作者
论文摘要
从它们留在对撞机实验的探测器中,像大型强子对撞机(LHC)一样,从其留下的击球中重建带电颗粒的轨迹是一个具有挑战性的组合问题,并且在计算上是一个挑战。在升级的高光度LHC处,交付的光度的增长十倍将导致人口稠密的探测器环境。传统技术用于重建粒子轨迹的时间比次数较差的尺度在轨道密度时尺度差。准确有效地将跟踪检测器中留下的命中集合分配给正确的粒子将是一种计算瓶颈,并激发了研究可能的替代方法。本文提出了一种量子增强的机器学习算法,该算法使用带有量子估计的核的支持向量机(SVM)将三个命中(三重态)的一组分类为属于同一粒子轨道或不属于同一粒子轨迹。然后将算法的性能与完全经典的SVM进行比较。量子算法显示,对于检测器的最内向层而言,准确性与经典算法相比,这对于轨道重建的初始播种步骤非常重要。
Reconstructing the trajectories of charged particles from the collection of hits they leave in the detectors of collider experiments like those at the Large Hadron Collider (LHC) is a challenging combinatorics problem and computationally intensive. The ten-fold increase in the delivered luminosity at the upgraded High Luminosity LHC will result in a very densely populated detector environment. The time taken by conventional techniques for reconstructing particle tracks scales worse than quadratically with track density. Accurately and efficiently assigning the collection of hits left in the tracking detector to the correct particle will be a computational bottleneck and has motivated studying possible alternative approaches. This paper presents a quantum-enhanced machine learning algorithm that uses a support vector machine (SVM) with a quantum-estimated kernel to classify a set of three hits (triplets) as either belonging to or not belonging to the same particle track. The performance of the algorithm is then compared to a fully classical SVM. The quantum algorithm shows an improvement in accuracy versus the classical algorithm for the innermost layers of the detector that are expected to be important for the initial seeding step of track reconstruction.