在线学习反向传播算法有效步长确定策略

Yuya Kaneda, Qiangfu Zhao, Yong Liu, Yan Pei
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引用次数: 1

摘要

本文研究了在线学习中反向传播(BP)算法步长的确定策略。众所周知,对于离线学习,可以在学习过程中自适应地确定步长。对于在线学习,由于相同的数据可能永远不会再次出现,因此我们不能使用离线学习中提出的相同策略。如果我们不为在线学习对神经网络进行适当的步长更新,网络的性能可能无法得到稳定的提高。在这里,我们研究了更新步长的四种策略。它们分别是(1)常数,(2)随机,(3)线性递减,(4)反比。第一种策略在学习过程中使用恒定的步长,第二种策略使用随机的步长,第三种策略线性地减少步长,第四种策略与时间成反比地更新步长。实验结果表明,第三种和第四种策略更有效。此外,与第三种策略相比,第四种策略更加稳定,通常可以稳定地提高性能。
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Strategies for determining effective step size of the backpropagation algorithm for on-line learning
In this paper, we investigate proper strategies for determining the step size of the backpropagation (BP) algorithm for on-line learning. It is known that for off-line learning, the step size can be determined adaptively during learning. For on-line learning, since the same data may never appear again, we cannot use the same strategy proposed for off-line learning. If we do not update the neural network with a proper step size for on-line learning, the performance of the network may not be improved steadily. Here, we investigate four strategies for updating the step size. They are (1) constant, (2) random, (3) linearly decreasing, and (4) inversely proportional, respectively. The first strategy uses a constant step size during learning, the second strategy uses a random step size, the third strategy decreases the step size linearly, and the fourth strategy updates the step size inversely proportional to time. Experimental results show that, the third and the fourth strategies are more effective. In addition, compared with the third strategy, the fourth one is more stable, and usually can improve the performance steadily.
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