论文标题
量子叠加灵感的尖峰神经网络
Quantum Superposition Inspired Spiking Neural Network
论文作者
论文摘要
尽管人工智能模型取得了进步,但神经网络仍无法实现人类的表现,部分原因是与人脑相比,信息的编码和处理方式差异。人工神经网络(ANN)中的信息使用统计方法表示,并作为拟合功能处理,从而可以处理图像,文本和语音处理中的结构模式。但是,例如,数据的统计特征的实质变化,例如,逆转图像的背景,会大大降低性能。在这里,我们提出了一个受大脑中量子机制和现象启发的量子叠加峰值神经网络(QS-SNN),该量子可以处理图像背景颜色的逆转。 QS-SNN从计算的角度将量子理论与脑启发的尖峰神经网络模型结合在一起,与传统ANN模型相比,量子理论具有更强的性能,尤其是在处理嘈杂的输入时。此处介绍的结果将为未来开发受脑启发的人工智能的努力提供信息。
Despite advances in artificial intelligence models, neural networks still cannot achieve human performance, partly due to differences in how information is encoded and processed compared to human brain. Information in an artificial neural network (ANN) is represented using a statistical method and processed as a fitting function, enabling handling of structural patterns in image, text, and speech processing. However, substantial changes to the statistical characteristics of the data, for example, reversing the background of an image, dramatically reduce the performance. Here, we propose a quantum superposition spiking neural network (QS-SNN) inspired by quantum mechanisms and phenomena in the brain, which can handle reversal of image background color. The QS-SNN incorporates quantum theory with brain-inspired spiking neural network models from a computational perspective, resulting in more robust performance compared with traditional ANN models, especially when processing noisy inputs. The results presented here will inform future efforts to develop brain-inspired artificial intelligence.