The Impact of Learning Rate Decay and Periodical Learning Rate Restart on Artificial Neural Network

Yimin Ding
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引用次数: 9

Abstract

There is no denying that learning rate is one of the most important hyper-parameter for model training. In this paper, two typical strategies, namely learning rate decay and periodical learning rate restart are tested in artificial neural networks (ANN) and compared with the fixed learning rate. Experiments demonstrate that learning rate adjustment strategies surpass fixed learning rate in model training, including fast convergence, high validation accuracy and low training loss. Besides, periodical learning rate restart strategy tends to take fewer epochs than learning rate decay to get the same accuracy. Thus, increasing the learning rate appropriately will better fit the model and achieve excellent performance.
学习率衰减和周期学习率重启对人工神经网络的影响
不可否认,学习率是模型训练中最重要的超参数之一。本文对人工神经网络中学习率衰减和周期性学习率重启两种典型策略进行了测试,并与固定学习率进行了比较。实验表明,学习率调整策略在模型训练中优于固定学习率,具有收敛速度快、验证精度高、训练损失小等特点。此外,周期学习率重启策略往往比学习率衰减策略需要更少的epoch来获得相同的精度。因此,适当提高学习率可以更好地拟合模型并获得优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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