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Stability analysis of associative memory network composed of stochastic neurons and dynamic synapses

机译:随机神经元和动态突触组成的联想记忆网络的稳定性分析

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摘要

We investigate the dynamical properties of an associative memory network consisting of stochastic neurons and dynamic synapses that show short-term depression and facilitation. In the stochastic neuron model used in this study, the efficacy of the synaptic transmission changes according to the short-term depression or facilitation mechanism. We derive a macroscopic mean field model that captures the overall dynamical properties of the stochastic model. We analyze the stability and bifurcation structure of the mean field model, and show the dependence of the memory retrieval performance on the noise intensity and parameters that determine the properties of the dynamic synapses, i.e., time constants for depressing and facilitating processes. The associative memory network exhibits a variety of dynamical states, including the memory and pseudo-memory states, as well as oscillatory states among memory patterns. This study provides comprehensive insight into the dynamical properties of the associative memory network with dynamic synapses.
机译:我们研究了由随机神经元和动态突触组成的关联记忆网络的动力学特性,这些神经突触显示了短期的抑郁和促进。在这项研究中使用的随机神经元模型中,突触传递的功效根据短期的抑郁或促进机制而改变。我们导出了一个宏观平均场模型,该模型捕获了随机模型的整体动力学特性。我们分析了均值场模型的稳定性和分叉结构,并显示了内存检索性能对噪声强度和确定动态突触特性的参数(即用于压制和促进过程的时间常数)的依赖性。关联存储网络展现出各种动态状态,包括存储状态和伪存储状态以及存储模式之间的振荡状态。这项研究为具有动态突触的联想记忆网络的动力学特性提供了全面的见解。

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