Litcius/Paper detail

Combine and conquer: event reconstruction with Bayesian Ensemble Neural Networks

Jack Y. Araz, Michael Spannowsky

2021Journal of High Energy Physics24 citationsDOIOpen Access PDF

Abstract

A bstract Ensemble learning is a technique where multiple component learners are combined through a protocol. We propose an Ensemble Neural Network (ENN) that uses the combined latent-feature space of multiple neural network classifiers to improve the representation of the network hypothesis. We apply this approach to construct an ENN from Convolutional and Recurrent Neural Networks to discriminate top-quark jets from QCD jets. Such ENN provides the flexibility to improve the classification beyond simple prediction combining methods by linking different sources of error correlations, hence improving the representation between data and hypothesis. In combination with Bayesian techniques, we show that it can reduce epistemic uncertainties and the entropy of the hypothesis by simultaneously exploiting various kinematic correlations of the system, which also makes the network less susceptible to a limitation in training sample size.

Topics & Concepts

Artificial intelligenceArtificial neural networkMachine learningBayesian probabilityComputer scienceRepresentation (politics)Pattern recognition (psychology)Convolutional neural networkEntropy (arrow of time)Ensemble learningSimple (philosophy)Construct (python library)Bayesian networkFlexibility (engineering)Event (particle physics)Component (thermodynamics)KinematicsFeedforward neural networkCross entropyMetric (unit)Bayesian inferencePrinciple of maximum entropyRecurrent neural networkDeep neural networksParticle physics theoretical and experimental studiesQuantum Chromodynamics and Particle InteractionsComputational Physics and Python Applications