Partition pooling for convolutional graph network applications in particle physics
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Published:2022-10-01
Issue:10
Volume:17
Page:P10004
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ISSN:1748-0221
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Container-title:Journal of Instrumentation
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language:
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Short-container-title:J. Inst.
Author:
Bachlechner M.,Birkenfeld T.,Soldin P.,Stahl A.,Wiebusch C.
Abstract
Abstract
Convolutional graph networks are used in particle physics
for effective event reconstructions and classifications. However,
their performances can be limited by the considerable amount of
sensors used in modern particle detectors if applied to sensor-level
data. We present a pooling scheme that uses partitioning to create
pooling kernels on graphs, similar to pooling on images. Partition
pooling can be used to adopt successful image recognition
architectures for graph neural network applications in particle
physics. The reduced computational resources allow for deeper
networks and more extensive hyperparameter optimizations. To show
its applicability, we construct a convolutional graph network with
partition pooling that reconstructs simulated interaction vertices
for an idealized neutrino detector. The pooling network yields
improved performance and is less susceptible to overfitting than a
similar network without pooling. The lower resource requirements
allow the construction of a deeper network with further improved
performance.
Subject
Mathematical Physics,Instrumentation
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