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Simultaneous Discovery of Conservation Laws and Hidden Particles With Smith Matrix Decomposition

机译:同时发现史密斯矩阵分解的保护法和隐藏颗粒

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Particle physics experiments, like the Large Hadron Collider in Geneva, can generate thousands of data points listing detected particle reactions. An important learning task is to analyze the reaction data for evidence of conserved quantities and hidden particles. This task involves latent structure in two ways: first, hypothesizing hidden quantities whose conservation determines which reactions occur, and second, hypothesizing the presence of hidden particles. We model this problem in the classic linear algebra framework of automated scientific discovery due to Valdes-Perez, Zytkow and Simon, where both reaction data and conservation laws are represented as matrices. We introduce a new criterion for selecting a matrix model for reaction data: find hidden particles and conserved quantities that rule out as many interactions among the nonhidden particles as possible. A polynomial-time algorithm for optimizing this criterion is based on the new theorem that hidden particles are required if and only if the Smith Normal Form of the reaction matrix R contains entries other than 0 or 1. To our knowledge this is the first application of Smith matrix decomposition to a problem in AI. Using data from particle accelerators, we compare our algorithm to the main model of particles in physics, known as the Standard Model: our algorithm discovers conservation laws that are equivalent to those in the Standard Model, and indicates the presence of a hidden particle (the electron antineutrino) in accordance with the Standard Model.
机译:粒子物理实验,如日内瓦的大型特罗龙撞机,可以生成数千个数据点列表检测到的粒子反应。一个重要的学习任务是分析反应数据,了解保守数量和隐藏颗粒的证据。这项任务以两种方式涉及潜在结构:首先,假设隐藏量,其保护确定发生了哪种反应,第二,假设隐藏颗粒的存在。由于Valdes-Perez,Zytkow和Simon,我们在自动化科学发现的经典线性代数框架中模拟了这个问题,其中反应数据和保护法都表示为矩阵。我们介绍了用于选择反应数据的矩阵模型的新标准:找到确定的隐藏颗粒和保守的数量,从而排除了非隐藏颗粒之间的许多相互作用。用于优化该标准的多项式时间算法基于许多反应矩阵R包含除0或1以外的条目的史密斯正常形式而需要隐藏粒子的新定理。对于我们所知,这是第一次应用史密斯矩阵分解在AI中的问题。使用来自粒子加速器的数据,我们将算法与物理学中粒子的主要模型进行比较,称为标准型号:我们的算法发现等同于标准模型中的群体的节约法,并表明存在隐藏粒子的存在(电子Antineutrino)按照标准模型。

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