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Background-activity-dependent properties of a network model for working memory that incorporates cellular bistability

机译:结合细胞双稳性的工作记忆网络模型的背景活动相关属性

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In models of working memory, transient stimuli are encoded by feature-selective persistent neural activity. Network models of working memory are also implicitly bistable. In the absence of a brief stimulus, only spontaneous, low-level, and presumably nonpatterned neural activity is seen. In many working-memory models, local recurrent excitation combined with long-range inhibition (Mexican hat coupling) can result in a network-induced, spatially localized persistent activity or "bump state" that coexists with a stable uniform state. There is now renewed interest in the concept that individual neurons might have some intrinsic ability to sustain persistent activity without recurrent network interactions. A recent visuospatial working-memory model (Camperi and Wang 1998) incorporates both intrinsic bistability of individual neurons within a firing rate network model and a single population of neurons on a ring with lateral inhibitory coupling. We have explored this model in more detail and have characterized the response properties with changes in background synaptic input I-o and stimulus width. We find that only a small range of I-o yields a working-memory-like coexistence of bump and uniform solutions that are both stable. There is a rather larger range where only the bump solution is stable that might correspond instead to a feature-selective long-term memory. Such a network therefore requires careful tuning to exhibit working-memory-like function. Interestingly, where bumps and uniform stable states coexist, we find a continuous family of stable bumps representing stimulus width. Thus, in the range of parameters corresponding to working memory, the model is capable of capturing a two-parameter family of stimulus features including both orientation and width.
机译:在工作记忆模型中,瞬态刺激通过特征选择的持久性神经活动进行编码。工作内存的网络模型也是隐式双稳态的。在没有短暂刺激的情况下,仅观察到自发的,低水平的并且可能是无模式的神经活动。在许多工作记忆模型中,局部反复激发与远程抑制(墨西哥帽耦合)相结合可以导致网络诱导的,空间局部的持久活动或“颠簸状态”,并与稳定的均匀状态共存。现在,人们对这种概念重新产生了兴趣,即单个神经元可能具有某种内在能力,可以维持持续的活动而无需反复的网络交互。最近的视觉空间工作记忆模型(Camperi和Wang,1998)结合了射击频率网络模型中单个神经元的固有双稳态和具有横向抑制耦合的环上单个神经元种群。我们已经更详细地探索了该模型,并通过背景突触输入I-o和刺激宽度的变化来表征响应特性。我们发现,只有很小范围的I-o会产生类似于工作记忆的碰撞和均稳定的均匀溶液共存。在一个较大的范围内,只有凹凸解决方案是稳定的,可能与功能选择的长期内存相对应。因此,这样的网络需要仔细调整以表现出类似工作存储器的功能。有趣的是,在颠簸和统一的稳定状态共存的地方,我们发现了代表刺激宽度的稳定颠簸的连续家族。因此,在对应于工作记忆的参数范围内,该模型能够捕获包括定向和宽度在内的两参数刺激特征族。

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