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2024年10月30日

On the Identification of Quark and Gluon Jets Using Artificial Neural Network Method

  • The identification of quark and gluon jets produced in eecollisions using the artificial neural network method is addressed.The structure and the learning algorithm of the BP(Back Propagation)neural network model is studied.Three characteristic parameters—the average multiplicity and the average transverse momentum of jets and the average value of the angles opposite to the quark or gluon jets are taken as training parameters and are inputed to the BP network for repeated training.The learning process is ended when the output error of the neural network is less than a pre-set precision(σ=0.005).The same training routine is repeated in each of the 8 energy bins ranging from 2.5—22.5 GeV,respectively.The finally updated weights and thresholds of the BP neural network are tested using the quark and gluon jet samples,getting from the non-symmetric three-jet events produced by the Monte Carlo generator JETSET 7.4.Then the pattern recognition of the mixed sample getting from the combination of the quark and gluon jet samples is carried out through applying the trained BP neural network.It turns out that the purities of the identified quark and gluon jets are around 75%—85%,showing that the artificial neural network is effective and practical in jet analysis.It is hopeful to use the further improved BP neural network to study the experimental data of high energy ee collisions.
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  • [1] . AMY Coll. Kim Y Ket al. Phys. Rev. Lett., 1989, 63: 172. JADE Coll. Bartel W et al. Phys. Lett., 1983, B123: 4603. OPAL Coll. Alexander G et al. Phys. Lett., 1991, B265: 4624. HU Shou-Ren et al. Neural Networks Introduction. Changsha: National University of Defense Technology Publishers, 1993 (in Chinese)(胡守仁等. 神经网络导论. 长沙: 国防科学技术大学出版社, 1993)5. Bishop C M. Neural Networks for Pattern Recognition. Oxford, UK: Oxford University Press, 19956. Ripey B D. Pattern Recognition and Neural Networks. Combridge, UK: Cambridge University Press, 19967. HAN Jia-Wei. Micheline Kamber, Data Mining: Concepts and Techniques. Morgan Kaufmann Publishers, 20028. Dokshitzer YU L. J. Phys., 1991, G17: 15379. ZHANG Kun-Shi, CHEN Gang, YU Mei-Ling et al. HEP NP, 2002, 26(11): 1110 (in Chinese)(张昆实, 陈刚, 喻梅凌等. 高能物理与核物理, 2002, 26(11): 1110)10. YU Mei-Ling, LIU Lian-Shou. Chin. Phys. Lett, 2002, 19: 647
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ZHANG Kun-Shi and LIU Lian-Shou. On the Identification of Quark and Gluon Jets Using Artificial Neural Network Method[J]. Chinese Physics C, 2004, 28(11): 1141-1145.
ZHANG Kun-Shi and LIU Lian-Shou. On the Identification of Quark and Gluon Jets Using Artificial Neural Network Method[J]. Chinese Physics C, 2004, 28(11): 1141-1145. shu
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Received: 2004-05-08
Revised: 1900-01-01
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On the Identification of Quark and Gluon Jets Using Artificial Neural Network Method

    Corresponding author: LIU Lian-Shou,
  • Institute of Particle Physics,Huazhong Normal University,Wuhan 430079,China2 School of Physics Science and Technology,Yangtze University,Jingzhou 434020,China

Abstract: The identification of quark and gluon jets produced in eecollisions using the artificial neural network method is addressed.The structure and the learning algorithm of the BP(Back Propagation)neural network model is studied.Three characteristic parameters—the average multiplicity and the average transverse momentum of jets and the average value of the angles opposite to the quark or gluon jets are taken as training parameters and are inputed to the BP network for repeated training.The learning process is ended when the output error of the neural network is less than a pre-set precision(σ=0.005).The same training routine is repeated in each of the 8 energy bins ranging from 2.5—22.5 GeV,respectively.The finally updated weights and thresholds of the BP neural network are tested using the quark and gluon jet samples,getting from the non-symmetric three-jet events produced by the Monte Carlo generator JETSET 7.4.Then the pattern recognition of the mixed sample getting from the combination of the quark and gluon jet samples is carried out through applying the trained BP neural network.It turns out that the purities of the identified quark and gluon jets are around 75%—85%,showing that the artificial neural network is effective and practical in jet analysis.It is hopeful to use the further improved BP neural network to study the experimental data of high energy ee collisions.

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