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arxiv: 2006.06685 · v3 · pith:FLJWBI7Enew · submitted 2020-06-11 · ✦ hep-ph

Invertible Networks or Partons to Detector and Back Again

classification ✦ hep-ph
keywords detectorinterpretationinvertiblenetworksper-eventallowallowsback
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For simulations where the forward and the inverse directions have a physics meaning, invertible neural networks are especially useful. A conditional INN can invert a detector simulation in terms of high-level observables, specifically for ZW production at the LHC. It allows for a per-event statistical interpretation. Next, we allow for a variable number of QCD jets. We unfold detector effects and QCD radiation to a pre-defined hard process, again with a per-event probabilistic interpretation over parton-level phase space.

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