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A three-term backpropagation algorithm

机译:三项反向传播算法

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The standard backpropagation algorithm for training artificial neural networks utilizes two terms, a learning rate and a momentum factor. The major limitations of this algorithm are the existence of temporary, local minima resulting from the saturation behaviour of the activation function, and the slow rates of convergence. In this paper, the addition of an extra term, a proportional factor, is proposed in order to speed-up the weight adjusting process. This new three-term backpropagation algorithm is tested on three example problems and the convergence behaviour of the three-term and the standard two-term backpropagation algorithm are compared. The results show that the proposed algorithm generally out-performs the conventional algorithm in terms of convergence speed and the ability to escape from local minima.
机译:用于训练人工神经网络的标准反向传播算法利用两个术语:学习率和动量因子。该算法的主要局限性是由于激活函数的饱和行为而导致的临时局部最小值的存在以及收敛速度较慢。在本文中,提出了一个额外的项,即比例因子,以加快重量调整过程。在三个示例问题上对该新的三项反向传播算法进行了测试,并比较了三项和标准两项反向传播算法的收敛性。结果表明,所提算法在收敛速度和逃避局部极小值方面均优于传统算法。

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