具有自适应学习率的神经网络

Abdelrahman Ezzeldin Nagib, M. Saeed, Shereen Fathy El-Feky, Ali Khater Mohamed
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引用次数: 3

摘要

在过去的二十年里,神经网络作为一种处理大量现实应用的有效工具,令人惊讶地崛起。神经网络的超参数优化问题由于对解的质量有很大的影响,在工业和科研领域引起了许多研究者的关注。由于学习率被认为是最重要的超参数之一,本文提出了一种新的带有冲击的学习率(ALRS)的自适应方法。实验结果证明,无论学习率的初始值是多少,新的自适应方法都能以更简单的结构提高神经网络的精度。
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Neural Network with Adaptive Learning Rate
Over the last two decades, the neural network has surprisingly arisen as an efficient tool for dealing with numerous real-life applications. Optimization of the hyperparameter of the neural network attracted many researchers in industrial and research areas because of its great effect on the quality of the solution. This paper presents a new adaptation for the learning rate with shock (ALRS) as the learning rate is considered one of the most important hyperparameters. The experimental results proved that the new adaptation leads to improved accuracy with a simpler structure for the neural network regardless of the initial value of the learning rate.
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