A Positive Resampler for Monte Carlo events with negative weights

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Jeppe R. Andersen
Christian Gütschow
Andreas Maier
Stefan Prestel
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[1] University of Durham,Institute for Particle Physics Phenomenology
[2] University College London,Department of Physics and Astronomy
[3] Deutsches Elektronen-Synchrotron,Theoretical Particle Physics, Department of Astronomy and Theoretical Physics
[4] DESY,undefined
[5] Lund University,undefined
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We propose the Positive Resampler to solve the problem associated with event samples from state-of-the-art predictions for scattering processes at hadron colliders typically involving a sizeable number of events contributing with negative weight. The proposed method guarantees positive weights for all physical distributions, and a correct description of all observables. A desirable side product of the method is the possibility to reduce the size of event samples produced by General Purpose Event Generators, thus lowering the resource demands for subsequent computing-intensive event processing steps. We demonstrate the viability and efficiency of our approach by considering its application to a next-to-leading order + parton shower merged prediction for the production of a W boson in association with multiple jets.
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