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Nonmonotone methods for backpropagation training with adaptive learning rate

机译:具有自适应学习率的非单调方法进行反向传播训练

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We present nonmonotone methods for feedforward neural network training, i.e., training methods in which error function values are allowed to increase at some iterations. More specifically, at each epoch we impose that the current error function value must satisfy an Armijo-type criterion, with respect to the maximum error function value of M previous epochs. A strategy to dynamically adapt M is suggested and two training algorithms with adaptive learning rates that successfully employ the above mentioned acceptability criterion are proposed. Experimental results show that the nonmonotone learning strategy improves the convergence speed and the success rate of the methods considered.
机译:我们提出了用于前馈神经网络训练的非单调方法,即允许误差函数值在某些迭代中增加的训练方法。更具体地说,在每个时期,相对于M个先前时期的最大误差函数值,我们强加当前误差函数值必须满足Armijo型准则。提出了一种动态适应M的策略,并提出了两种具有自适应学习率的训练算法,它们成功地采用了上述可接受标准。实验结果表明,非单调学习策略提高了所考虑方法的收敛速度和成功率。

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