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Coherent optical neural networks: generalization ability in frequency domain

机译:相干光神经网络:频域泛化能力

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Frequency-domain generalization ability in coherent optical neural networks is analyzed. The coherent optical neural network system consists of an optical complex-valued neural network, a phase reference path, and coherent detectors with 90-degree optical hybrids for self-homodyne detection. The learning process is realized by adjusting delay time and transparency of neural connections in the complex-valued neural network. Information geometry in the learning process is discussed for obtaining a parameter region where a reasonable generalization is realized in frequency space. It is found that there are error-function minima appear periodically both in delay-time domain and input-signal-frequency domain and, hence, that initial connection delay should be within a certain range for a successful learning. Experiments demonstrate that a stable learning and a reasonable generalization in the frequency domain are realized in a parameter range suggested by the theory.
机译:分析了相干光神经网络中的频域泛化能力。相干光学神经网络系统由光学复合值的神经网络,相位参考路径和具有90度光学混合的相干检测器组成,用于自卵差别检测。通过调整复值神经网络中的神经连接的延迟时间和透明度来实现学习过程。讨论了学习过程中的信息几何来获取参数区域,其中在频率空间中实现了合理的泛化。发现存在误差函数最小值在延迟时域和输入信号频域中周期性地出现,因此,初始连接延迟应该在成功学习的一定范围内。实验表明,在理论建议的参数范围中实现了稳定的学习和合理的概括。

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