Deep-Learning in Search of Light Charged Higgs
In this work, we deep-learn light charged Higgs signal in top quark decays which poses difficulties due to strong W boson contamination. We construct Deep Neural Networks (DNN) with appropriate architecture and determine signal extraction efficiency by considering various features (kinematical and h...
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Zusammenfassung: | In this work, we deep-learn light charged Higgs signal in top quark decays
which poses difficulties due to strong W boson contamination. We construct Deep
Neural Networks (DNN) with appropriate architecture and determine signal
extraction efficiency by considering various features (kinematical and human
engineered parameters). Results show that DNN gives better performance than the
classical neural networks and has ability to find regions of high efficiency
even the input features are not human-engineered. In a sense, human-engineered
high-level features are offset by DNNs with different combinations of the
low-level kinematical features. Additionally, it is shown that increasing the
number of processing units in DNNs does not necessarily cause an increase in
efficiency due mainly to increased complexity. Our method and results can set
an example of signal extraction from strong backgrounds. |
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DOI: | 10.48550/arxiv.1803.01550 |