Classifying Topological Charge in SU(3) Yang-Mills Theory with Machine Learning
September 13, 2019 ยท Declared Dead ยท ๐ Progress of Theoretical and Experimental Physics
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Authors
Takuya Matsumoto, Masakiyo Kitazawa, Yasuhiro Kohno
arXiv ID
1909.06238
Category
hep-lat
Cross-listed
cs.CV,
cs.LG,
hep-ph
Citations
12
Venue
Progress of Theoretical and Experimental Physics
Last Checked
1 month ago
Abstract
We apply a machine learning technique for identifying the topological charge of quantum gauge configurations in four-dimensional SU(3) Yang-Mills theory. The topological charge density measured on the original and smoothed gauge configurations with and without dimensional reduction is used as inputs for the neural networks (NN) with and without convolutional layers. The gradient flow is used for the smoothing of the gauge field. We find that the topological charge determined at a large flow time can be predicted with high accuracy from the data at small flow times by the trained NN; for example, the accuracy exceeds $99\%$ with the data at $t/a^2\le0.3$. High robustness against the change of simulation parameters is also confirmed with a fixed physical volume. We find that the best performance is obtained when the spatial coordinates of the topological charge density are fully integrated out in preprocessing, which implies that our convolutional NN does not find characteristic structures in multi-dimensional space relevant for the determination of the topological charge.
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