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Novel deep learning methods for track reconstruction

TLDR
Two sets of new deep learning models for reconstructing tracks using space-point data arranged as sequences or connected graphs that are scaleable with simple architecture and relatively few parameters are shown.
Abstract
Author(s): Farrell, Steven; Calafiura, Paolo; Mudigonda, Mayur; Prabhat; Anderson, Dustin; Vlimant, Jean-Roch; Zheng, Stephan; Bendavid, Josh; Spiropulu, Maria; Cerati, Giuseppe; Gray, Lindsey; Kowalkowski, Jim; Spentzouris, Panagiotis; Tsaris, Aristeidis | Abstract: For the past year, the HEP.TrkX project has been investigating machine learning solutions to LHC particle track reconstruction problems. A variety of models were studied that drew inspiration from computer vision applications and operated on an image-like representation of tracking detector data. While these approaches have shown some promise, image-based methods face challenges in scaling up to realistic HL-LHC data due to high dimensionality and sparsity. In contrast, models that can operate on the spacepoint representation of track measurements ("hits") can exploit the structure of the data to solve tasks efficiently. In this paper we will show two sets of new deep learning models for reconstructing tracks using space-point data arranged as sequences or connected graphs. In the first set of models, Recurrent Neural Networks (RNNs) are used to extrapolate, build, and evaluate track candidates akin to Kalman Filter algorithms. Such models can express their own uncertainty when trained with an appropriate likelihood loss function. The second set of models use Graph Neural Networks (GNNs) for the tasks of hit classification and segment classification. These models read a graph of connected hits and compute features on the nodes and edges. They adaptively learn which hit connections are important and which are spurious. The models are scaleable with simple architecture and relatively few parameters. Results for all models will be presented on ACTS generic detector simulated data.

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Journal ArticleDOI

Secondary Vertex Finding in Jets with Neural Networks.

TL;DR: A novel, universal set-to-graph model is implemented, which takes into account information from all tracks in a jet to determine if pairs of tracks originated from a common vertex.
Posted ContentDOI

A Quantum Graph Neural Network Approach to Particle Track Reconstruction

TL;DR: An improved model with an iterative approach to overcome the low accuracy convergence of the initial oversimplified Tree Tensor Network (TTN) model is presented.
Journal ArticleDOI

Particle Track Reconstruction with Quantum Algorithms

TL;DR: In this paper, a quantum-based track finding algorithm is proposed to reduce the combinatorial background during the initial seeding stage of the Kalman filter. But, it is not shown to be robust and to provide good physics performance.
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