• Title/Summary/Keyword: non-monotonic neuron

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Deterministic Boltzmann Machine Based on Nonmonotonic Neuron Model (비단조 뉴런 모델을 이용한 결정론적 볼츠만 머신)

  • 강형원;박철영
    • Proceedings of the IEEK Conference
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    • 2003.07d
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    • pp.1553-1556
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    • 2003
  • In this paper, We evaluate the learning ability of non-monotonic DBM(Deterministic Boltzmann Machine) network through numerical simulations. The simulation results show that the proposed system has higher performance than monotonic DBM network model. Non-monotonic DBM network also show an interesting result that network itself adjusts the number of hidden layer neurons. DBM network can be realized with fewer components than other neural network models. These results enhance the utilization of non-monotonic neurons in the large scale integration of neuro-chips.

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Performance Improvement of Deterministic Boltzmann Machine Based on Nonmonotonic Neuron (비단조 뉴런에 의한 결정론적 볼츠만머신의 성능 개선)

  • 강형원;박철영
    • Proceedings of the Korea Society for Industrial Systems Conference
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    • 2003.05a
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    • pp.52-56
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    • 2003
  • In this paper, We evaluate the learning ability of non-monotonic DBM(Deterministic Boltzmann Machine) network through numerical simulations. The simulation results show that the proposed system has higher performance than monotonic DBM network model. Non-monotonic DBM network also show an interesting result that network itself adjusts the number of hidden layer neurons. DBM network can be realized with fewer components than other neural network models. These results enhance the utilization of non-monotonic neurons in the large scale integration of neuro-chips.

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Learning Ability of Deterministic Boltzmann Machine with Non-Monotonic Neurons in Hidden Layer (은닉층에 비단조 뉴런을 갖는 결정론적 볼츠만 머신의 학습능력에 관한 연구)

  • 박철영
    • Journal of the Korean Institute of Intelligent Systems
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    • v.11 no.6
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    • pp.505-509
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    • 2001
  • In this paper, we evaluate the learning ability of non-monotonic DMM(Deterministic Boltzmann Machine) network through numerical simulations. The simulation results show that the proposed system has higher performance than monotonic DBM network model. Non-monotonic DBM network also show an interesting result that network itself adjusts the number of hidden layer neurons. DBM network can be realized with fewer components than other neural network models. These results enhance the utilization of non-monotonic neurons in the large scale integration of neuro-chips.

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