Quantum Science and Engineering Centre (QSec), Nanyang Technological University, 50 Nanyang Ave, 639798, Singapore, Singapore.
Complexity Institute and School of Physical and Mathematical Sciences, Nanyang Technological University, 50 Nanyang Ave, 639798, Singapore, Singapore.
Nat Commun. 2021 Jan 19;12(1):457. doi: 10.1038/s41467-020-20719-7.
Complex-valued neural networks have many advantages over their real-valued counterparts. Conventional digital electronic computing platforms are incapable of executing truly complex-valued representations and operations. In contrast, optical computing platforms that encode information in both phase and magnitude can execute complex arithmetic by optical interference, offering significantly enhanced computational speed and energy efficiency. However, to date, most demonstrations of optical neural networks still only utilize conventional real-valued frameworks that are designed for digital computers, forfeiting many of the advantages of optical computing such as efficient complex-valued operations. In this article, we highlight an optical neural chip (ONC) that implements truly complex-valued neural networks. We benchmark the performance of our complex-valued ONC in four settings: simple Boolean tasks, species classification of an Iris dataset, classifying nonlinear datasets (Circle and Spiral), and handwriting recognition. Strong learning capabilities (i.e., high accuracy, fast convergence and the capability to construct nonlinear decision boundaries) are achieved by our complex-valued ONC compared to its real-valued counterpart.
复值神经网络比实值神经网络具有许多优势。传统的数字电子计算平台无法执行真正的复值表示和操作。相比之下,以相位和幅度同时编码信息的光计算平台可以通过光干涉执行复数运算,从而显著提高计算速度和能效。然而,迄今为止,大多数光学神经网络的演示仍然只利用传统的为数字计算机设计的实值框架,放弃了光学计算的许多优势,例如高效的复值运算。在本文中,我们重点介绍了一种实现真正复值神经网络的光学神经芯片(ONC)。我们在四个设置中对标定了我们的复值 ONC 的性能:简单的布尔任务、鸢尾花数据集的物种分类、非线性数据集(圆和螺旋)的分类以及手写识别。与实值 ONC 相比,我们的复值 ONC 具有强大的学习能力(即高精度、快速收敛和构建非线性决策边界的能力)。