APS Logo

DeepCore 2.0: Convolutional Neural Network for Tracking in Jets with High Transverse Momentum

ORAL

Abstract

Tracking of charged particles in dense environments, especially in the core of high transverse-momentum ($p_T$) jets, presents a growing challenge with increasing LHC luminosity. Despite the CMS phase-1 pixel detector upgrade, and dedicated cluster splitting and pattern recognition algorithms like JetCore, there is still significant room for improvement. Limiting the computation time for track reconstruction represents an additional challenge as the number of proton-proton interactions per crossing (pileup) increases. DeepCore is a machine learning algorithm designed to improve track seeding in the core of high-$p_T$ jets in the presence of increased pileup. In this talk, we summarize recent improvements to DeepCore optimized in the context of a hybrid with JetCore, leading to a significant increase in track reconstruction efficiency relative to JetCore alone for particles with $p_T$ above 10 GeV. This improved algorithm, referred to as DeepCore2.0, also leads to a reduction in overall computation time for track reconstruction, with further reduction possible in the future.

Publication: [1] Description and performance of track and primary-vertex reconstruction with the CMS tracker, the CMS Collaboration, e-Print: 1405.6569 [physics.ins-det], DOI:10.1088/1748-0221/9/10/P10009, Published in: JINST 9 (2014) 10, P10009.<br>[2] High pT jets tracking and cluster splitting, The CMS Collaboration, CMS-DP-14/032.<br>[3] Keras, F. Chollet et al., Software available from https://github.com/keras-team/keras.<br>[4] TensorFlow: Large-Scale Machine Learning on Heterogeneous Distributed Systems, M. Abadi et al., Software available from tensorflow.org, e-Print: 1603.04467 [cs.DC].<br>[5] DeepCore: Convolutional Neural Network for high pT jet tracking, The CMS Collaboration, CMS-DP-19/007.<br>[6] Deep Learning using Rectified Linear Units (ReLU), A.F. Agarap, 2018.<br>[7] Scikit-learn: Machine Learning in Python, F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, B. Thirion, O. Grisel et al., Journal of Machine Learning Research 12 (2011) 2825.<br>[8] Adam: A Method for Stochastic Optimization, Diederik P. Kingma, Jimmy Lei Ba, e-Print:1412.6980 [cs.LG].<br>[9] Track and vertex reconstruction: From classical to adaptive methods, A. Strandlie and R. Fruhwirth, Rev. Mod. Phys. 82 (2010) 1419.

Presenters

  • Hichem Bouchamaoui

    Princeton University

Authors

  • Hichem Bouchamaoui

    Princeton University

  • Nicholas J Haubrich

    Princeton University

  • Soohyun Yoon

    Princeton University

  • James D Olsen

    Princeton University