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Information storage and retrieval analysis of hierarchically coupled associative memories

机译:分层耦合联想存储器的信息存储和检索分析

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This paper presents information storage and retrieval analysis as well as energy analysis of a multi-level or hierarchically coupled associative memory based on coupled generalised-brain-state-in-a-box (GBSB) neural networks. In this model, the memory processes are described as being organised functionally in hierarchical levels where higher levels coordinate sets of functions of the lower levels. We consider the case where lowest level subnetworks have predefined attractors, prior to imposing their association through imprinting synapses between them. Simulations are carried out using linearly independent (Li) and orthogonal vectors considering a wide range of parameters. The results obtained show that, even when the neural networks are weakly coupled, the system still presents a significant convergence to global patterns, mainly in orthogonal vectors.
机译:本文介绍了基于耦合广义脑框状态神经网络(GBSB)的多层或分层耦合联想存储器的信息存储和检索分析以及能量分析。在该模型中,存储过程被描述为在功能上按层次结构组织,其中较高层次协调较低层次的功能集。我们考虑最低级别的子网具有预定义吸引子的情况,然后通过在它们之间烙印突触来强加它们的关联。考虑到广泛的参数,使用线性独立(Li)和正交向量进行仿真。所获得的结果表明,即使当神经网络弱耦合时,该系统仍然呈现出对全局模式的显着收敛,主要是在正交向量中。

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