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The Sign Rule and Beyond: Boundary Effects Flexibility and Noise Correlations in Neural Population Codes

机译:符号规则及其以外的内容:神经人口代码中的边界效应灵活性和噪声相关性

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摘要

Over repeat presentations of the same stimulus, sensory neurons show variable responses. This “noise” is typically correlated between pairs of cells, and a question with rich history in neuroscience is how these noise correlations impact the population's ability to encode the stimulus. Here, we consider a very general setting for population coding, investigating how information varies as a function of noise correlations, with all other aspects of the problem – neural tuning curves, etc. – held fixed. This work yields unifying insights into the role of noise correlations. These are summarized in the form of theorems, and illustrated with numerical examples involving neurons with diverse tuning curves. Our main contributions are as follows. (1) We generalize previous results to prove a sign rule (SR) — if noise correlations between pairs of neurons have opposite signs vs. their signal correlations, then coding performance will improve compared to the independent case. This holds for three different metrics of coding performance, and for arbitrary tuning curves and levels of heterogeneity. This generality is true for our other results as well. (2) As also pointed out in the literature, the SR does not provide a necessary condition for good coding. We show that a diverse set of correlation structures can improve coding. Many of these violate the SR, as do experimentally observed correlations. There is structure to this diversity: we prove that the optimal correlation structures must lie on boundaries of the possible set of noise correlations. (3) We provide a novel set of necessary and sufficient conditions, under which the coding performance (in the presence of noise) will be as good as it would be if there were no noise present at all.
机译:在相同刺激的重复演示中,感觉神经元显示出可变的反应。这种“噪音”通常在成对的细胞之间相关,神经科学领域历史悠久的一个问题是这些噪音相关性如何影响人群编码刺激的能力。在这里,我们考虑人口编码的一个非常通用的设置,研究信息如何随噪声相关性而变化,而问题的所有其他方面(神经调整曲线等)均保持不变。这项工作产生了对噪声相关性作用的统一见解。这些以定理的形式总结,并通过涉及具有不同调整曲线的神经元的数值示例进行说明。我们的主要贡献如下。 (1)我们将先前的结果进行概括,以证明一个符号规则(SR)—如果成对的神经元之间的噪声相关具有相反的符号与其信号相关,则与独立情况相比,编码性能将会提高。这适用于三种不同的编码性能指标,以及任意调整曲线和异质性水平。这种普遍性也适用于我们的其他结果。 (2)正如文献中指出的那样,SR并没有提供良好编码的必要条件。我们证明了各种各样的相关结构可以改善编码。其中许多违反了SR,正如实验观察到的相关性一样。这种多样性具有结构性:我们证明最佳的相关性结构必须位于可能的噪声相关性集的边界上。 (3)我们提供了一组新颖的必要条件和充分条件,在这些条件下,编码性能(在有噪声的情况下)将与完全没有噪声的情况下的编码性能一样好。

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