二元值反向传播的光学矩阵-矢量实现

S. A. Brodsky, C. Guest
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引用次数: 2

摘要

神经网络的光学实现可以结合神经网络自适应并行处理和光自由空间连接的优点。二值Backpropagation1是一种与标准Backpropagation2相关的监督学习算法,显著降低了互连存储和计算需求。这种二值反向传播的实现使用光矩阵向量乘法3来表示网络层之间的前向信息流。以前的模拟光网络存储系统已经描述过了。
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Optical Matrix-Vector Implementation of Binary Valued Backpropagation
Optical implementations of neural networks can combine advantages of neural network adaptive parallel processing and optical free-space connectivity. Binary valued Backpropagation1, a supervised learning algorithm related to standard Backpropagation2, significantly reduces interconnection storage and computation requirements. This implementation of binary valued Backpropagation used optical matrix-vector multiplication3 to represent the forward information flow between network layers. Previous analog optical network memory systems have been described4.
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