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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Effective neural network training with adaptive learning rate based on training loss
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Effective neural network training with adaptive learning rate based on training loss

机译:基于训练损失的自适应学习率有效的神经网络培训

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摘要

A method that uses an adaptive learning rate is presented for training neural networks. Unlike most conventional updating methods in which the learning rate gradually decreases during training, the proposed method increases or decreases the learning rate adaptively so that the training loss (the sum of cross-entropy losses for all training samples) decreases as much as possible. It thus provides a wider search range for solutions and thus a lower test error rate. The experiments with some well-known datasets to train a multilayer perceptron show that the proposed method is effective for obtaining a better test accuracy under certain conditions. (c) 2018 Elsevier Ltd. All rights reserved.
机译:呈现使用自适应学习率的方法用于训练神经网络。 与大多数传统更新方法不同,其中学习率在训练期间逐渐降低,所提出的方法适自适应地增加或降低学习率,以便训练损失(所有训练样本的跨熵损耗总和)尽可能地降低。 因此,它为解决方案提供了更广泛的搜索范围,从而提供较低的测试误差率。 与一些众所周知的数据集一起培训多层的Perceptron的实验表明,该方法在某些条件下获得更好的测试精度是有效的。 (c)2018年elestvier有限公司保留所有权利。

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