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BP算法学习率自适应性研究
引用本文:吴立锋,吴经龙.BP算法学习率自适应性研究[J].大众科技,2011(12):16-18.
作者姓名:吴立锋  吴经龙
作者单位:中南民族大学计算机科学学院,湖北武汉,430074
基金项目:中南民族大学自然科学基金资助项目
摘    要:BP算法通过迭代地处理一组训练样本,将每个样本的实际输出与期望输出比较,不断调整神经网络的权值和阈值,使网络的均方差最小。BP算法的有效性在某种程度上依赖于学习率的选择,由于标准BP算法中学习率固定不变,因此其收敛速度慢,易陷入局部极小值。针对此问题,通过分析BP神经网络的误差曲面可知,在误差曲面平坦区域需要有较大的学...

关 键 词:神经网络  BP算法  学习率  收敛速度

The Research of the adaptive learning rate about BP algorithm
Abstract:BP algorithm lets the Means Square Error of the BP network is minimum, by iteratively processing a set of training samples, comparing the actual output with desired output of each sample, and constantly adjusting the weights and thresholds of the neural network. The validity of BP algorithm depends on the choice of the learning rate to some extent, as the learning rate of the standard BP algorithm is fixed, so the convergence is slow and easily trapped into local minima. For this problem, by analyzing the error surface of BP neural network, we can find that in the flat region of the error surface requires a larger learning rate, in gradient area of the error surface requires a smaller learning rate, thus can speed up the convergence speed, avoid falling into local minima. Experimental results show that adaptive learning rate BP algorithm converges significantly faster than the standard BP algorithm.
Keywords:neural network  back propagation algorithm  learning rate  convergence speed
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