An extended back-propagation learning algorithm by using heterogeneous processing units

C.-L. Chen, R. S. Nutter
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引用次数: 27

Abstract

Based on the idea of using heterogeneous processing units (PUs) in a network, a variation of the backpropagation (BP) learning algorithm is presented. Three parameters, which are adjustable like connection weights, are incorporated into each PU to increase its autonomous capability by enhancing the output function. The extended BP learning algorithm thus is developed by updating the three parameters as well as connection weights. The extended BP is intended not only to improve the learning speed, but also to reduce the occurrence of local minima. The algorithm has been intensively tested on the XOR problem. By carefully choosing learning rates, results show that the extended BP appears to have advantages over the standard BP in terms of faster learning speed and fewer local minima.<>
基于异构处理单元的扩展反向传播学习算法
基于在网络中使用异构处理单元(pu)的思想,提出了一种反向传播(BP)学习算法的变体。每个PU都包含三个参数,如连接权重可调,通过增强输出功能来增加其自主能力。扩展BP学习算法通过更新三个参数和连接权值来实现。扩展BP不仅可以提高学习速度,还可以减少局部极小值的出现。该算法在异或问题上进行了大量的测试。通过仔细选择学习率,结果表明扩展BP在学习速度更快和局部最小值更少方面优于标准BP。
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