GANplifying Event Samples
Butter, Anja, Diefenbacher, Sascha, Kasieczka, Gregor, Nachman, Benjamin, Plehn, Tilman
A critical question concerning generative networks applied to event generation in particle physics is if the generated events add statistical precision beyond the training sample. We show for a simple example with increasing dimensionality how generative networks indeed amplify the training statistics. We quantify their impact through an amplification factor or equivalent numbers of sampled events.
Sep-16-2020