Identifying Jets Using Artifical Neural Networks

POSTER

Abstract

We investigate particle jet interactions with the Quark Gluon Plasma (QGP) using artificial neural networks modeled on those used in computer image recognition. We create jet images by binning jet particles into pixels and preprocessing every image. We analyzed the jets with a Multi-layered maxout network and a convolutional network. We demonstrate each network's effectiveness in differentiating simulated quenched jets from unquenched jets, and we investigate the method that the network uses to discriminate among different quenched jet simulations. Finally, we develop a greater understanding of the physics behind quenched jets by investigating what the network learnt as well as its effectiveness in differentiating samples.

*Yale College Freshman Summer Research Fellowship in the Sciences and Engineering

Authors

  • Benjamin Rosand

    • Yale University
    • Yale Univ
  • Helen Caines

    • Yale University
  • Sofia Checa

    • Yale University