神经网络随机脉冲编码算法的精度分析

H. Eguchi, D. Stork, G. Wolff
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引用次数: 4

摘要

作者介绍了最近采用随机脉冲编码的神经网络算法的数学结果。在这种算法中,神经激活和连接权重被编码为随机脉冲流,其中平均密度代表信号或权重值。作者给出了二输入和三输入神经元期望输出的精确形式,并在大量输入的极限下描述了这些函数。它们解决了这些随机技术固有的一个基本限制:它们的有限精度。精度取决于脉冲平均周期,这个周期越长(即采样的脉冲数量越多),精度越高。作者推导了神经周期分布的精确表达式,并进行了统计分析,以找到5位精度所需的平均周期,这是其他人确定的成功实现反向传播所必需的分辨率。结果表明,要达到5b的精度,大约需要1000个脉冲。这些结果揭示了神经学习算法的随机脉冲实现在速度和内存需求方面的基本限制
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Precision analysis of stochastic pulse encoding algorithms for neural networks
The authors present mathematical results related to recent neural network algorithms employing stochastic pulse encoding. In such algorithms, neural activations and connection weights are encoded as stochastic streams of pulses, where the average density represents the signal or weight value. The authors show the precise form of expected output for two- and three-input neurons, and describe these functions in the limit for a large number of inputs. They address a fundamental limitation inherent in these stochastic techniques: their finite precision. The precision is dependent upon the pulse averaging period-the longer this period (i.e. the larger the number of pulses sampled), the higher the precision. The authors derived exact expressions for the distribution of neural periods as well as a statistical analysis to find the averaging period required for precision of five bits-a resolution determined by others to be necessary for successful implementations of backpropagation. It is found that approximately=1000 pulses are required for 5-b precision. These results reveal fundamental limits in speed and memory requirements for stochastic pulse implementations of neural learning algorithms.<>
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