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|a Shanahan, Phiala E.
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|a Massachusetts Institute of Technology. Center for Theoretical Physics
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|a Massachusetts Institute of Technology. Department of Physics
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|a Detmold, William
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|a Trewartha, Daniel
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|a Detmold, William
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|a Machine learning action parameters in lattice quantum chromodynamics
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|b American Physical Society,
|c 2018-05-21T13:15:41Z.
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|z Get fulltext
|u http://hdl.handle.net/1721.1/115530
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|a Numerical lattice quantum chromodynamics studies of the strong interaction are important in many aspects of particle and nuclear physics. Such studies require significant computing resources to undertake. A number of proposed methods promise improved efficiency of lattice calculations, and access to regions of parameter space that are currently computationally intractable, via multi-scale action-matching approaches that necessitate parametric regression of generated lattice datasets. The applicability of machine learning to this regression task is investigated, with deep neural networks found to provide an efficient solution even in cases where approaches such as principal component analysis fail. The high information content and complex symmetries inherent in lattice QCD datasets require custom neural network layers to be introduced and present opportunities for further development.
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|a United States. Department of Energy (Award DE-SC0010495)
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|a United States. Department of Energy (Grant DE-SC0011090)
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|a United States. Department of Energy (Award DE-SC0018121)
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|a en
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|a Article
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|t Physical Review D
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