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Polaritonic Neuromorphic Computing Outperforms Linear Classifiers

机译:偏光性神经形态计算优于线性分类器

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Machine learning software applications are ubiquitous in many fields of science and society for their outstanding capability to solve computationally vast problems like the recognition of patterns and regularities in big data sets. In spite of these impressive achievements, such processors are still based on the so-called von Neumann architecture, which is a bottleneck for faster and power-efficient neuromorphic computation. Therefore, one of the main goals of research is to conceive physical realizations of artificial neural networks capable of performing fully parallel and ultrafast operations. Here we show that lattices of exciton-polariton condensates accomplish neuromorphic computing with outstanding accuracy thanks to their high optical nonlinearity. We demonstrate that our neural network significantly increases the recognition efficiency compared with the linear classification algorithms on one of the most widely used benchmarks, the MNIST problem, showing a concrete advantage from the integration of optical systems in neural network architectures.
机译:机器学习软件应用程序在许多科学和社会领域普遍存在,他们出色的能力解决了计算出的巨大问题,如识别大数据集中的模式和规律。尽管有了这些令人印象深刻的成就,但这些处理器仍然是基于所谓的冯Neumann架构,这是一种瓶颈,用于更快,效率高效的神经形态计算。因此,研究的主要目标之一是设想能够进行完全平行和超快操作的人工神经网络的物理实现。在这里,我们表明,由于其高光学非线性,Exciton-Polariton凝结物的粘合剂缩合的神经形态计算具有出色的准确性。我们证明,与最广泛使用的基准,MNIST问题之一的线性分类算法相比,我们的神经网络与线性分类算法相比显着提高了识别效率,从而显示了神经网络架构中光学系统的集成的具体优势。

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