Transferability of deep learning models in searches for new physics at colliders

High Energy Physics - Phenomenology High Energy Physics - Experiment (hep-ex) Science & Technology High Energy Physics - Phenomenology (hep-ph) Ciências Naturais::Ciências Físicas 0103 physical sciences FOS: Physical sciences Computational Physics (physics.comp-ph) Physics - Computational Physics 01 natural sciences High Energy Physics - Experiment
DOI: 10.1103/physrevd.101.035042 Publication Date: 2020-03-02T16:26:41Z
ABSTRACT
7 pages, 7 figures, accepted for publication in PRD<br/>In this work we assess the transferability of deep learning models to detect beyond the standard model signals. For this we trained Deep Neural Networks on three different signal models: $tZ$ production via a flavour changing neutral current, pair-production of vector-like $T$-quarks via standard model gluon fusion and via a heavy gluon decay in a grid of 3 mass points: 1, 1.2 and 1.4 TeV. These networks were trained with $t\bar{t}$, $Z$+jets and dibosons as the main backgrounds. Limits were derived for each signal benchmark using the inference of networks trained on each signal independently, so that we can quantify the degradation of their discriminative power across different signal processes. We determine that the limits are compatible within uncertainties for all networks trained on signals with vector-like $T$-quarks, whether they are produced via heavy gluon decay or standard model gluon fusion. The network trained on flavour changing neutral current signal, while struggling the most on the other signals, still produce reasonable limits. These results indicate that deep learning models are capable of providing sensitivity in the search for new physics even if it manifests itself in models not assumed during training.<br/>
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