论文标题

关于交错夸克的狄拉克特征值光谱的深度学习研究

Deep learning study on the Dirac eigenvalue spectrum of staggered quarks

论文作者

Jeong, Hwancheol, Jung, Chulwoo, Jwa, Seungyeob, Kim, Jeehun, Kim, Nam Soo, Kim, Sunghee, Lee, Sunkyu, Lee, Weonjong, Lee, Youngjo, Pak, Jeonghwan, Park, Chanju

论文摘要

我们使用深度学习(DL)技术研究了在Dirac特征值光谱上交错的夸克的手性。 Kluberg-stern构建交错双线操作员的方法保守了连续性的属性,例如递归关系,手性的独特性和病房的身份,该特性在Chirality操作员的矩阵元素中导致了独特而典型的模式(我们称其为“泄漏模式(LP)”)。 DL分析给出了$ 99.4(2)\%$的普通量规配置的准确性和$ 0.998 $ AUC(ROC曲线下的区域),用于分类DIRAC特征值频谱中的非零模式八位位。它确认泄漏模式在正常仪表配置上是通用的。事实证明,多层感知器(MLP)方法是我们在LP上研究的最佳DL模型。

We study the chirality of staggered quarks on the Dirac eigenvalue spectrum using deep learning (DL) techniques. The Kluberg-Stern method to construct staggered bilinear operators conserves continuum property such as recursion relations, uniqueness of chirality, and Ward identities, which leads to a unique and characteristic pattern (we call it "leakage pattern (LP)") in the matrix elements of the chirality operator sandwiched between two quark eigenstates of staggered Dirac operator. DL analysis gives $99.4(2)\%$ accuracy on normal gauge configurations and $0.998$ AUC (Area Under ROC Curve) for classifying non-zero mode octets in the Dirac eigenvalue spectrum. It confirms that the leakage pattern is universal on normal gauge configurations. The multi-layer perceptron (MLP) method turns out to be the best DL model for our study on the LP.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源