Zhao Shaokai, Chen Bin, Wang Hui, Luo Zhiyuan, Zhang Tao
College of Life Sciences, Nankai University, 300071 Tianjin, P. R. China.
Department of Computer Science, Royal Holloway, University of London, Egham, Surrey TW20 0EX, UK.
Int J Neural Syst. 2022 Jun;32(6):2250027. doi: 10.1142/S0129065722500277. Epub 2022 May 6.
In the hippocampal dentate gyrus (DG), pattern separation mainly depends on the concepts of 'expansion recoding', meaning random mixing of different DG input channels. However, recent advances in neurophysiology have challenged the theory of pattern separation based on these concepts. In this study, we propose a novel feed-forward neural network, inspired by the structure of the DG and neural oscillatory analysis, to increase the Hopfield-network storage capacity. Unlike the previously published feed-forward neural networks, our bio-inspired neural network is designed to take advantage of both biological structure and functions of the DG. To better understand the computational principles of pattern separation in the DG, we have established a mouse model of environmental enrichment. We obtained a possible computational model of the DG, associated with better pattern separation ability, by using neural oscillatory analysis. Furthermore, we have developed a new algorithm based on Hebbian learning and coupling direction of neural oscillation to train the proposed neural network. The simulation results show that our proposed network significantly expands the storage capacity of Hopfield network, and more effective pattern separation is achieved. The storage capacity rises from 0.13 for the standard Hopfield network to 0.32 using our model when the overlap in patterns is 10%.
在海马齿状回(DG)中,模式分离主要依赖于“扩展重编码”的概念,即不同DG输入通道的随机混合。然而,神经生理学的最新进展对基于这些概念的模式分离理论提出了挑战。在本研究中,我们受DG结构和神经振荡分析的启发,提出了一种新型前馈神经网络,以提高霍普菲尔德网络的存储容量。与先前发表的前馈神经网络不同,我们的生物启发式神经网络旨在利用DG的生物结构和功能。为了更好地理解DG中模式分离的计算原理,我们建立了一个环境富集的小鼠模型。通过神经振荡分析,我们获得了一个与更好的模式分离能力相关的DG可能的计算模型。此外,我们基于赫布学习和神经振荡的耦合方向开发了一种新算法来训练所提出的神经网络。仿真结果表明,我们提出的网络显著扩展了霍普菲尔德网络的存储容量,并实现了更有效的模式分离。当模式重叠为10%时,存储容量从标准霍普菲尔德网络的0.13提高到使用我们模型的0.32。