...
首页> 外文期刊>The journal of high energy physics >SO(8) supergravity and the magic of machine learning
【24h】

SO(8) supergravity and the magic of machine learning

机译:所以(8)超级升降和机器学习的魔力

获取原文
   

获取外文期刊封面封底 >>

       

摘要

A bstract Using de Wit-Nicolai D = 4 N $$ mathcal{N} $$ = 8 SO(8) supergravity as an example, we show how modern Machine Learning software libraries such as Google’s TensorFlow can be employed to greatly simplify the analysis of high-dimensional scalar sectors of some M-Theory compactifications. We provide detailed information on the location, symmetries, and particle spectra and charges of 192 critical points on the scalar manifold of SO(8) supergravity, including one newly discovered N $$ mathcal{N} $$ = 1 vacuum with SO(3) residual symmetry, one new potentially stabilizable non-supersymmetric solution, and examples for “Galois conjugate pairs” of solutions, i.e. solution-pairs that share the same gauge group embedding into SO(8) and minimal polynomials for the cosmological constant. Where feasible, we give analytic expressions for solution coordinates and cosmological constants. As the authors’ aspiration is to present the discussion in a form that is accessible to both the Machine Learning and String Theory communities and allows adopting our methods towards the study of other models, we provide an introductory overview over the relevant Physics as well as Machine Learning concepts. This includes short pedagogical code examples. In particular, we show how to formulate a requirement for residual Supersymmetry as a Machine Learning loss function and effectively guide the numerical search towards supersymmetric critical points. Numerical investigations suggest that there are no further supersymmetric vacua beyond this newly discovered fifth solution.
机译:使用de wit-nicolai d = 4 n $$ mathcal {n} $$ = 8 so(8)supergravity作为一个例子,我们展示了如何使用谷歌的Tensorflow等现代机器学习软件库来大大简化一些M-理论压缩的高维标量扇区分析。我们提供有关地点,对称性和粒子光谱的详细信息,以及192个临界点上的标量歧管,包括一个新发现的n $$ mathcal {n} $$ = 1真空( 3)残留对称,一个新的潜在的镇定非超对称的解决方案,并为解决方案的“伽罗瓦共轭双”,即溶液对共享相同规范群嵌入SO(8)和极小多项式的宇宙常数的实例。在可行的情况下,我们提供解决方案坐标和宇宙常数的分析表达式。由于作者的愿望是以机器学习和弦理论社区访问的形式呈现讨论,并允许采用我们对其他模型的研究,我们提供相关物理和机器的介绍性概述学习概念。这包括简短的教学代码示例。特别是,我们展示了如何为机器学习损失函数制定残余超对称的要求,并有效地指导数值检索朝着超对对称关键点。数值调查表明,除了新发现的第五解决方案之外,没有进一步的超对称ViCa。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号