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首页> 外文期刊>Applied optics >CONVERGENCE OF BACKWARD-ERROR-PROPAGATION LEARNING IN PHOTOREFRACTIVE CRYSTALS
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CONVERGENCE OF BACKWARD-ERROR-PROPAGATION LEARNING IN PHOTOREFRACTIVE CRYSTALS

机译:光折变晶体中向后误差传播学习的收敛性

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We analytically determine that the backward-error-propagation learning algorithm has a well-defined region of convergence in neural learning-parameter space for two classes of photorefractive-based optical neural-network architectures. The first class uses electric-field amplitude encoding of signals and weights in a fully coherent system, whereas the second class uses intensity encoding of signals and weights in an incoherent/coherent system. Under typical assumptions on the grating formation in photorefractive materials used in adaptive optical interconnections, we compute weight updates for both classes of architectures. Using these weight updates, we derive a set of conditions that are sufficient for such a network to operate within the region of convergence. The results are verified empirically by simulations of the XOR sample problem. The computed weight updates for both classes of architectures contain two neural learning parameters: a learning-rate coefficient and a weight-decay coefficient. We show that these learning parameters are directly related to two important design parameters: system gain and exposure energy. The system gain determines the ratio of the learning-rate parameter to decay-rate parameter, and the exposure energy determines the size of the decay-rate parameter. We conclude that convergence is guaranteed (assuming no spurious local minima in the error function) by using a sufficiently high gain and a sufficiently low exposure energy per weight update. (C) 1996 Optical Society of America [References: 36]
机译:我们通过分析确定,对于两类基于光折射的光学神经网络体系结构,后向误差传播学习算法在神经学习参数空间中具有明确定义的收敛区域。第一类使用全相干系统中信号和权重的电场幅度编码,而第二类使用非相干/相干系统中信号和权重的强度编码。在自适应光学互连中使用的光折变材料中形成光栅的典型假设下,我们计算两种架构的权重更新。使用这些权重更新,我们得出了足以使此类网络在融合区域内运行的一组条件。通过对XOR样本问题的仿真,对结果进行了经验验证。这两类体系结构的计算出的权重更新包含两个神经学习参数:学习率系数和权重衰减系数。我们表明,这些学习参数与两个重要的设计参数直接相关:系统增益和曝光能量。系统增益确定学习速率参数与衰减速率参数的比率,曝光能量确定衰减速率参数的大小。我们得出结论,通过使用足够高的增益和足够低的每次重量更新的曝光能量,可以保证收敛(假定误差函数中没有虚假的局部最小值)。 (C)1996年美国眼镜学会[参考:36]

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