A new back-propagation algorithm with coupled neuron

M. Fukumi, S. Omatu
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引用次数: 2

Abstract

Summary form only given, as follows. A novel algorithm is developed for training multilayer fully connected feedforward networks of coupled neurons with both signoid and signum functions. Such networks can be trained by the familiar backpropagation algorithm since the coupled neuron (CONE) proposed uses the differentiable sigmoid function for its trainability. The algorithm is called CNR, or coupled neuron rule. The backpropagation (BP) and MRII algorithms which have both advantages and disadvantages have been developed earlier. The CONE takes advantages of the key ideas of both methods. By applying CNR to a simple network, it is shown that the convergence of the output error is much faster than that of the BP method when the variable learning rate is used. Finally, simulation results illustrate the effective learning algorithm.<>
一种新的耦合神经元反向传播算法
仅给出摘要形式,如下。提出了一种训练具有signid和signum函数的耦合神经元的多层全连接前馈网络的新算法。由于所提出的耦合神经元(CONE)使用可微的s型函数作为其可训练性,因此这种网络可以用熟悉的反向传播算法进行训练。该算法被称为CNR,或耦合神经元规则。反向传播算法(BP)和核磁共振算法(mri)各有优缺点,较早得到了发展。CONE利用了这两种方法的关键思想。通过将CNR应用于一个简单的网络,表明当使用变学习率时,输出误差的收敛速度比BP方法快得多。最后,仿真结果验证了该学习算法的有效性
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