Farhat N H
Appl Opt. 1987 Dec 1;26(23):5093-103. doi: 10.1364/AO.26.005093.
Self-organization and learning is a distinctive feature of neural nets and processors that sets them apart from conventional approaches to signal processing. It leads to self-programmability which alleviates the problem of programming complexity in artificial neural nets. In this paper architectures for partitioning an optoelectronic analog of a neural net into distinct layers with prescribed interconnectivity pattern to enable stochastic learning by simulated annealing in the context of a Boltzmann machine are presented. Stochastic learning is of interest because of its relevance to the role of noise in biological neural nets. Practical considerations and methodologies for appreciably accelerating stochastic learning in such a multilayered net are described. These include the use of parallel optical computing of the global energy of the net, the use of fast nonvolatile programmable spatial light modulators to realize fast plasticity, optical generation of random number arrays, and an adaptive noisy thresholding scheme that also makes stochastic learning more biologically plausible. The findings reported predict optoelectronic chips that can be used in the realization of optical learning machines.
自组织和学习是神经网络和处理器的一个显著特征,这使它们有别于传统的信号处理方法。它带来了自可编程性,缓解了人工神经网络中编程复杂性的问题。本文提出了将神经网络的光电模拟划分为具有规定互连模式的不同层的架构,以便在玻尔兹曼机的背景下通过模拟退火实现随机学习。随机学习之所以受到关注,是因为它与噪声在生物神经网络中的作用相关。描述了在这种多层网络中显著加速随机学习的实际考虑因素和方法。这些包括使用网络全局能量的并行光学计算、使用快速非易失性可编程空间光调制器来实现快速可塑性、随机数阵列的光学生成,以及一种自适应噪声阈值方案,该方案也使随机学习在生物学上更具合理性。所报告的研究结果预测了可用于实现光学学习机器的光电芯片。