Published April 20, 2020 | Version v1
Conference paper Open

CTD2020: A Quantum Graph Network Approach to Particle Track Reconstruction

  • 1. Middle East Technical University (TR)
  • 2. gluoNNet & THE Port
  • 3. Universita e INFN, Padova (IT)
  • 4. CERN
  • 5. California Institute of Technology (US)
  • 6. Deutsches Elektronen-Synchrotron (DE)
  • 7. GluoNNet

Description

The unprecedented increase of complexity and scale of data is expected in the necessary computation for tracking detectors of the High Luminosity Large Hadron Collider (HL-LHC) experiments. While currently used Kalman filter based algorithms are reaching their limits in terms of ambiguities from increasing number of simultaneous collisions, occupancy, and scalability (worse than quadratic), a variety of machine learning approaches to particle track reconstruction are explored. It has been demonstrated previously by HEP.TrkX using TrackML datasets, that graph neural networks, processing events as a graph connecting track measurements, are a promising solution and can reduce the combinatorial background to a manageable amount and are scaling to a computationally reasonable size. In previous work, we have shown a first attempt of Quantum Computing to Graph Neural Networks for track reconstruction of particles. We aim to leverage the capability of quantum computing to evaluate a very large number of states simultaneously and thus to effectively search in a large parameter space. As the next step in this paper, we present an improved model with an iterative approach to overcome the low accuracy convergence of the initial oversimplified Tree Tensor Network (TTN) model.

Files

talk.pdf

Files (846.3 kB)

Name Size Download all
md5:e39ce90c977823df9e189f7adfa21156
846.3 kB Preview Download

Additional details