构建具有学习和泛化能力的最优前馈神经网络

Jen-Lun Yuan, H. Chiang, Chia-Jen Lin, Tai-Hsiung Li, Yung-Tien Chen, Chiew-Yann Chiou
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引用次数: 1

摘要

作者考虑的问题是找到最小的神经网络(就神经元和突触的数量而言),以满足所需的学习和泛化能力。提出了一种自动确定神经元数量和突触连接位置的算法。引入了一种新的神经网络模型来解决最优结构问题。突触连接的修剪是基于相应权重小于切割阈值的测试假设。仿真结果证明了神经网络的设计:(1)7段电子显示器;(2)电力系统负荷建模问题。(1)获得了最优架构(在实现神经元数量的下界的意义上),(2)获得了具有所需学习/泛化能力的突触的50%-60%的节省。
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Towards constructing optimal feedforward neural networks with learning and generalization capabilities
The authors consider the problem of finding minimal neural networks (in terms of number of neurons and synapses) subject to desired learning and generalization capabilities. An algorithm which automatically determines the number of neurons and the location of synaptic connections is proposed. A new neural network model is introduced to facilitate solving the optimal architecture problem. The synaptic connections are pruned based on testing hypotheses that the corresponding weights be smaller than cutting thresholds. Simulation results are demonstrated for designing neural networks for: (1) a 7-segment electronic display; and (2) a power system load modeling problem. Optimal architecture (in the sense of achieving the lower bound on the number of neurons) are obtained for (1), and a 50%-60% save-up of synapses with the desired learning/generalization capabilities is obtained for (2).<>
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