Benjamin Nachman: "Likelihood free generative modeling for high energy physics"
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Machine Learning for Physics and the Physics of Learning 2019 Workshop I: From Passive to Active: Generative and Reinforcement Learning with Physics "Likelihood free generative modeling for high energy physics" Benjamin Nachman, Lawrence Berkeley National Laboratory Abstract: I will discuss two techniques for generating new examples in high energ...
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