bfnn学习失效模式分析及改进算法

Shuiming Zhong, Yinghua Lv, Tinghuai Ma, Yu Xue
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摘要

为了改进bfnn的学习机制,本文首先分析了SBALR训练的bfnn的失效模式,其失效模式采用局部循环的形式。然后利用灵敏度理论,提出了一种干扰学习算法,使学习失败的bfnn脱离局部循环。新算法的目标是尽可能保持现有的学习性能。实验结果证明了新算法在学习效果和学习效率上的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing on the Failure Mode of BFNNs' Learning and its Improving Algorithm
In order to improve the learning mechanism of BFNNs, the paper firstly analyzes the failure mode of BFNNs trained by SBALR, which takes the form of a local cycle. And then by mean of the sensitivity theory, a disturbance learning algorithm is developed to make the BFNNs that suffering from learning failure to escape the local cycle. The new algorithm aims to keep the existing learning performance as much as possible. Experimental results demonstrate the effectiveness of the new algorithm on both learning effect and learning efficiency.
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