Quark and gluon jet discrimination by neutral networks
Graham, Mary Ann
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https://hdl.handle.net/2142/18859
Description
Title
Quark and gluon jet discrimination by neutral networks
Author(s)
Graham, Mary Ann
Issue Date
1994
Doctoral Committee Chair(s)
Jones, Lorella M.
Department of Study
Physics
Discipline
Physics
Degree Name
Ph.D.
Degree Level
Dissertation
Keyword(s)
quark
gluon
jet discrimination
high energy physics
Language
en
Abstract
As the energy scales of high energy physics experiments increase, the amount of data
which is available becomes difficult to manage. A method that can increase the signal to
background ratio would be a clear advantage. The focus of the study reported here is on
increasing the light quark jet signal to gluon jet background.
We begin by demonstrating that there are characteristics common to quark jets and to
gluon jets regardless of the interaction that produced them. The classification technique we
use depends on the mass of the jet as well as center-of-mass energy of the hard subprocess
that produces the jet.
In addition, we present the quark-gluon jet separability results of an artificial neural
network trained on three-jet e+ e- events at the Z0 mass, using a backpropagation algorithm.
The inputs to the network are the longitudinal momenta of the leading hadrons in the jet.
We tested the network with quark and gluon jets from both e+e--+ 3jets and pp-+ 2jets.
Finally, we compare the performance of the artificial neural network with the results of
making well chosen physical cuts.
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