Distinguishing W' Signals at Hadron Colliders Using Neural Networks
Abstract
We investigate a neural network-based hypothesis test to distinguish different W' and charged scalar resonances through the +cancelET channel at hadron colliders. This is traditionally challenging due to a four-fold ambiguity at proton-proton colliders, such as the Large Hadron Collider. Of the neural network approaches we studied, we find a multi-class classifier based on a fully-connected neural network trained upon 2D histograms made from kinematic variables of the final state to be the most powerful. Furthermore, by considering the 1-jet processes, we demonstrate that one can generalize to multiple 2D histograms to represent different variable pairs. Finally, as a comparison to traditional approaches, we compare our method with Bayesian hypothesis testing and discuss the pros and cons of each approach. The neural network scheme presented in this paper is a powerful tool that can help probe the properties of charged resonances.