HYTREES: combining matrix elements and parton shower for hypothesis testing

Stefan Prestel, Michael Spannowsky

Forskningsoutput: TidskriftsbidragArtikel i vetenskaplig tidskriftPeer review

10 Citeringar (SciVal)


We present a new way of performing hypothesis tests on scattering data, by means of a perturbatively calculable classifier. This classifier exploits the “history tree” of how the measured data point might have evolved out of any simpler (reconstructed) points along classical paths, while explicitly keeping quantum–mechanical interference effects by copiously employing complete leading-order matrix elements. This approach extends the standard Matrix Element Method to an arbitrary number of final state objects and to exclusive final states where reconstructed objects can be collinear or soft. We have implemented this method into the standalone package hytrees and have applied it to Higgs boson production in association with two jets, with subsequent decay into photons. hytrees allows to construct an optimal classifier to discriminate this process from large Standard Model backgrounds. It further allows to find the most sensitive kinematic regions that contribute to the classification.

TidskriftEuropean Physical Journal C
StatusPublished - 2019 jul

Ämnesklassifikation (UKÄ)

  • Subatomär fysik
  • Annan data- och informationsvetenskap


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