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Robust persistent activity in neural fields with asymmetric connectivity

机译:具有非对称连通性的神经场中的持久活动

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Modeling studies have shown that recurrent interactions within neural networks are capable of self-sustaining non-uniform activity profiles. These patterns are thought to be the neural basis of working memory. However, the lack of robustness challenge this view as already small deviations from the assumed interaction symmetry destroy the attractor state. Here we analyze attractor states of a neural field model composed of bistable neurons. We show the existence of self-stabilized patterns that robustly represent the cue position in the presence of a substantial asymmetry in the connection profile. Using approximation techniques we derive an explicit expression for a threshold value describing the transition to a traveling activity wave.
机译:建模研究表明,神经网络内的经常性交互作用能够自我维持非均匀活动曲线。这些模式被认为是工作记忆的神经基础。但是,缺乏鲁棒性挑战了这种观点,因为与假定的相互作用对称性的很小偏差会破坏吸引子状态。在这里,我们分析由双稳态神经元组成的神经场模型的吸引子状态。我们显示了存在自稳定模式,该模式在连接配置文件中存在实质性不对称的情况下稳健地表示提示位置。使用逼近技术,我们导出了阈值的显式表达式,用于描述向行进活动波的过渡。

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