论文

论文

Exploring supersymmetry with machine learning
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论文题目: Exploring supersymmetry with machine learning
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作者: Ren, Jie; Wu, Lei; Yang, Jin Min; Zhao, Jun
论文出处:
刊物名称: NUCLEAR PHYSICS B
: 2019
: 943
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: 114613
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摘要: Investigation of well-motivated parameter space in the theories of Beyond the Standard Model (BSM) plays an important role in new physics discoveries. However, a large-scale exploration of models with multi-parameter or equivalent solutions with a finite separation, such as supersymmetric models, is typically a time-consuming and challenging task. In this paper, we propose a self-exploration method, named Machine Learning Scan (MLS), to achieve an efficient test of models. As a proof-of-concept, we apply MLS to investigate the subspace of MSSM and CMSSM and find that such a method can reduce the computational cost and may be helpful for accelerating the exploration of supersymmetry. (C) 2019 The Author(s). Published by Elsevier B.V.
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