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Self-trapping in an attractor neural network with nearest neighbor synapses mimics full connectivity

机译:具有最近邻突触的吸引子神经网络中的自我陷阱模仿了完全连通性

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A means of providing the feedback necessary for an associative memory is suggested by self-trapping, the development of localization phenomena and order in coupled physical systems. Following the lead of Hopfield (1982, 1984) who exploited the formal analogy of a fully-connected ANN to an infinite ranged interaction Ising model, we have carried through a similar development to demonstrate that self-trapping networks (STNs) with only near-neighbor synapses develop attractor states through localization of a self-trapping input. The attractor states of the STN are the stored memories of this system, and are analogous to the magnetization developed in a self-trapping 1D Ising system. Post-synaptic potentials for each stored memory become trapped at non-zero valves and a sparsely-connected network evolves to the corresponding state. Both analytic and computational studies of the STN show that this model mimics a fully-connected ANN.
机译:通过自陷,耦合现象的发展和局部物理现象的发展,提出了一种为联想记忆提供必要反馈的方法。霍普菲尔德(Hopfield,1982,1984)率先将完全连接的人工神经网络的形式比喻运用到无限范围的相互作用伊辛模型中,之后我们进行了类似的开发,以证明仅具有近距离接触的自陷网络(STN)邻居突触通过自陷输入的本地化发展吸引子状态。 STN的吸引子状态是该系统的存储内存,类似于在自陷式1D Ising系统中产生的磁化强度。每个存储内存的突触后电位都被困在非零阀处,并且稀疏连接的网络演变为相应的状态。对STN的分析和计算研究均表明,该模型模仿了完全连接的ANN。

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