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Attractor neural networks storing multiple space representations: A model for hippocampal place fields

机译:吸引人的神经网络,存储多个空间表示形式:海马场所场的模型

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A recurrent neural network model storing multiple spatial maps, or "charts," is analyzed. A network of this type has been suggested as a model for the origin of place cells in the hippocampus of rodents. The extremely diluted and fully connected limits are studied, and the storage capacity and the information capacity are found. The important parameters determining the performance of the network are the sparsity of the spatial representations and the degree of connectivity, as found already for the storage of individual memory patterns in the general theory of autoassociative networks. Such results suggest a quantitative parallel between theories of hippocampal function in different animal species, such as primates (episodic memory) and rodents (memory for space). [S1063-651X(98)09112-0]. [References: 10]
机译:分析了存储多个空间图或“图表”的递归神经网络模型。已经提出了这种类型的网络作为啮齿动物海马中位置细胞起源的模型。研究了极度稀释和完全连接的限制,并找到了存储容量和信息容量。决定网络性能的重要参数是空间表示的稀疏性和连接程度,这在自动关联网络的一般理论中已经发现用于存储单个内存模式。这些结果表明,在不同的动物物种中,例如灵长类动物(间隔记忆)和啮齿动物(空间记忆),海马功能理论之间存在定量的平行关系。 [S1063-651X(98)09112-0]。 [参考:10]

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