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Representing Where along with What Information in a Model of a Cortical Patch

机译:表示皮质贴片模型中的位置以及哪些信息

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摘要

Behaving in the real world requires flexibly combining and maintaining information about both continuous and discrete variables. In the visual domain, several lines of evidence show that neurons in some cortical networks can simultaneously represent information about the position and identity of objects, and maintain this combined representation when the object is no longer present. The underlying network mechanism for this combined representation is, however, unknown. In this paper, we approach this issue through a theoretical analysis of recurrent networks. We present a model of a cortical network that can retrieve information about the identity of objects from incomplete transient cues, while simultaneously representing their spatial position. Our results show that two factors are important in making this possible: A) a metric organisation of the recurrent connections, and B) a spatially localised change in the linear gain of neurons. Metric connectivity enables a localised retrieval of information about object identity, while gain modulation ensures localisation in the correct position. Importantly, we find that the amount of information that the network can retrieve and retain about identity is strongly affected by the amount of information it maintains about position. This balance can be controlled by global signals that change the neuronal gain. These results show that anatomical and physiological properties, which have long been known to characterise cortical networks, naturally endow them with the ability to maintain a conjunctive representation of the identity and location of objects.
机译:在现实世界中的行为要求灵活地组合和维护有关连续变量和离散变量的信息。在视觉领域,几条证据表明,某些皮层网络中的神经元可以同时表示有关对象位置和身份的信息,并在不再存在对象时保持这种组合表示。但是,用于这种组合表示的底层网络机制是未知的。在本文中,我们通过对递归网络的理论分析来解决这个问题。我们提出了一个皮质网络模型,该模型可以从不完整的瞬态线索中检索有关对象身份的信息,同时表示其空间位置。我们的结果表明,有两个因素对于实现这一点很重要:A)循环连接的度量单位,B)神经元线性增益的空间局部变化。度量连接允许对有关对象标识的信息进行本地化检索,而增益调制可确保在正确位置进行本地化。重要的是,我们发现网络可以检索和保留的有关身份的信息量受到其所保持的有关位置的信息量的强烈影响。这种平衡可以通过改变神经元增益的整体信号来控制。这些结果表明,早已知道可表征皮质网络的解剖学和生理学特性,自然使它们具有保持对象身份和位置的联合表示的能力。

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