论文标题

Quiver突变,Seiberg二元性和机器学习

Quiver Mutations, Seiberg Duality and Machine Learning

论文作者

Bao, Jiakang, Franco, Sebastián, He, Yang-Hui, Hirst, Edward, Musiker, Gregg, Xiao, Yan

论文摘要

我们启动了机器学习到Seiberg二元性的应用,重点介绍了Quiver仪表理论的情况,这在集群代数的背景下也对数学感兴趣。在Seiberg二元性的一般主题中,我们定义和探讨了各种有趣的问题,大致分为二进制确定从一系列双重性类别中挑选的一对理论是彼此双重偶性的,以及对二元类别的多级级别的确定,给定理论的属于二元。我们研究机器学习的性能如何取决于几个变量,包括类和突变类型(有限或无限)。此外,我们评估了幼稚贝叶斯分类器与卷积神经网络的相对优势。最后,我们还研究了结果如何受到其他数据的影响,例如仪表/风味群的等级以及某些因存在基础二磷剂方程而激发的变量。在考虑的所有问题中,都可以实现高准确性和信心。

We initiate the study of applications of machine learning to Seiberg duality, focusing on the case of quiver gauge theories, a problem also of interest in mathematics in the context of cluster algebras. Within the general theme of Seiberg duality, we define and explore a variety of interesting questions, broadly divided into the binary determination of whether a pair of theories picked from a series of duality classes are dual to each other, as well as the multi-class determination of the duality class to which a given theory belongs. We study how the performance of machine learning depends on several variables, including number of classes and mutation type (finite or infinite). In addition, we evaluate the relative advantages of Naive Bayes classifiers versus Convolutional Neural Networks. Finally, we also investigate how the results are affected by the inclusion of additional data, such as ranks of gauge/flavor groups and certain variables motivated by the existence of underlying Diophantine equations. In all questions considered, high accuracy and confidence can be achieved.

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