In contrast to software simulations of neural networks, hardware implementations have often limited or no tunability. While such networks promise great improvements in terms of speed and energy efficiency, their performance is limited by the difficulty to apply efficient training. We propose and realize experimentally an optical system where highly efficient backpropagation training can be applied through an array of highly nonlinear, non-tunable nodes. The system includes exciton-polariton nodes realizing nonlinear activation functions. We demonstrate a high classification accuracy in the MNIST handwritten digit benchmark in a single hidden layer system.
翻译:与对神经网络的软件模拟相比,硬件的安装往往有限或没有金枪鱼的可捕量,虽然这种网络在速度和能源效率方面可望大大改进,但由于难以应用有效的培训,其性能受到限制。我们提议并实验性地实现一个光学系统,通过一系列高度非线性、非不可调和的节点,可以进行高效的反向推进培训。该系统包括实现非线性激活功能的exciton-polariton节点。在单一的隐藏层系统中,我们展示了MNIST手写数字基准的高分类精度。