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Deep-learning top taggers or the end of QCD?
oleh: Gregor Kasieczka, Tilman Plehn, Michael Russell, Torben Schell
Format: | Article |
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Diterbitkan: | SpringerOpen 2017-05-01 |
Deskripsi
Abstract Machine learning based on convolutional neural networks can be used to study jet images from the LHC. Top tagging in fat jets offers a well-defined framework to establish our DeepTop approach and compare its performance to QCD-based top taggers. We first optimize a network architecture to identify top quarks in Monte Carlo simulations of the Standard Model production channel. Using standard fat jets we then compare its performance to a multivariate QCD-based top tagger. We find that both approaches lead to comparable performance, establishing convolutional networks as a promising new approach for multivariate hypothesis-based top tagging.