Classifying topological sector via machine learning

December 28, 2019 Β· Declared Dead Β· πŸ› Proceedings of 37th International Symposium on Lattice Field Theory β€” PoS(LATTICE2019)

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Authors Masakiyo Kitazawa, Takuya Matsumoto, Yasuhiro Kohno arXiv ID 1912.12410 Category hep-lat Cross-listed cs.CV Citations 0 Venue Proceedings of 37th International Symposium on Lattice Field Theory β€” PoS(LATTICE2019) Last Checked 3 months ago
Abstract
We employ a machine learning technique for an estimate of the topological charge $Q$ of gauge configurations in SU(3) Yang-Mills theory in vacuum. As a first trial, we feed the four-dimensional topological charge density with and without smoothing into the convolutional neural network and train it to estimate the value of $Q$. We find that the trained neural network can estimate the value of $Q$ from the topological charge density at small flow time with high accuracy. Next, we perform the dimensional reduction of the input data as a preprocessing and analyze lower dimensional data by the neural network. We find that the accuracy of the neural network does not have statistically-significant dependence on the dimension of the input data. From this result we argue that the neural network does not find characteristic features responsible for the determination of $Q$ in the higher dimensional space.
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