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Interareal coupling reduces encoding variability in multi-area models of spatial working memory

机译:区域间耦合减少了空间工作内存的多区域模型中的编码可变性

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摘要

Persistent activity observed during delayed-response tasks for spatial working memory (Funahashi et al., ) has commonly been modeled by recurrent networks whose dynamics is described as a bump attractor (Compte et al., ). We examine the effects of interareal architecture on the dynamics of bump attractors in stochastic neural fields. Lateral inhibitory synaptic structure in each area sustains stationary bumps in the absence of noise. Introducing noise causes bumps in individual areas to wander as a Brownian walk. However, coupling multiple areas together can help reduce the variability of the bump's position in each area. To examine this quantitatively, we approximate the position of the bump in each area using a small noise expansion that also assumes weak amplitude interareal projections. Our asymptotic results show the motion of the bumps in each area can be approximated as a multivariate Ornstein–Uhlenbeck process. This shows reciprocal coupling between areas can always reduce variability, if sufficiently strong, even if one area contains much more noise than the other. However, when noise is correlated between areas, the variability-reducing effect of interareal coupling is diminished. Our results suggest that distributing spatial working memory representations across multiple, reciprocally-coupled brain areas can lead to noise cancelation that ultimately improves encoding.
机译:在空间工作记忆的延迟响应任务过程中观察到的持续活动(Funahashi等人)通常由循环网络建模,其动态性被描述为颠簸吸引子(Compte等人)。我们研究了区域结构对随机神经场中凹凸吸引子动力学的影响。每个区域的侧向抑制性突触结构在没有噪声的情况下维持平稳的颠簸。引入噪音会导致单个区域的颠簸随着布朗步行而徘徊。但是,将多个区域耦合在一起可以帮助减少每个区域中凸块位置的变化。为了定量地检查这一点,我们使用一个小的噪声扩展来近似估计每个区域中凸块的位置,该噪声扩展还假设了幅度较小的区域间投影。我们的渐近结果表明,每个区域的颠簸运动可以近似为多变量Ornstein–Uhlenbeck过程。这表明,即使一个区域包含的噪声比另一个区域多得多,但区域之间的相互耦合始终可以减小可变性(如果足够强)。然而,当噪声在区域之间相关时,区域间耦合的降低可变性的作用减小。我们的结果表明,将空间工作记忆表示分布在多个相互耦合的大脑区域中会导致噪声消除,从而最终改善编码。

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