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The Geometry of Information Coding in Correlated Neural Populations
Annual Review of Neuroscience ( IF 13.9 ) Pub Date : 2021-07-08 , DOI: 10.1146/annurev-neuro-120320-082744
Rava Azeredo da Silveira 1 , Fred Rieke 1
Affiliation  

Neurons in the brain represent information in their collective activity. The fidelity of this neural population code depends on whether and how variability in the response of one neuron is shared with other neurons. Two decades of studies have investigated the influence of these noise correlations on the properties of neural coding. We provide an overview of the theoretical developments on the topic. Using simple, qualitative, and general arguments, we discuss, categorize, and relate the various published results. We emphasize the relevance of the fine structure of noise correlation, and we present a new approach to the issue. Throughout this review, we emphasize a geometrical picture of how noise correlations impact the neural code.

中文翻译:


相关神经群体中信息编码的几何学

大脑中的神经元代表其集体活动中的信息。这种神经群体代码的保真度取决于一个神经元反应的可变性是否以及如何与其他神经元共享。二十年的研究调查了这些噪声相关性对神经编码特性的影响。我们概述了该主题的理论发展。我们使用简单、定性和一般性的论点,讨论、分类和关联各种已发表的结果。我们强调噪声相关性精细结构的相关性,并提出了解决该问题的新方法。在这篇综述中,我们强调了噪声相关性如何影响神经代码的几何图。

更新日期:2021-07-09
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