Sompolinsky H, Yoon H, Kang K, Shamir M
Racah Institute of Physics and Center for Neural Computation, The Hebrew University of Jerusalem, Jerusalem 91904, Israel.
Phys Rev E Stat Nonlin Soft Matter Phys. 2001 Nov;64(5 Pt 1):051904. doi: 10.1103/PhysRevE.64.051904. Epub 2001 Oct 17.
Neuronal representations of external events are often distributed across large populations of cells. We study the effect of correlated noise on the accuracy of these neuronal population codes. Our main question is whether the inherent error in the population code can be suppressed by increasing the size of the population N in the presence of correlated noise. We address this issue using a model of a population of neurons that are broadly tuned to an angular variable in two dimensions. The fluctuations in the neuronal activities are modeled as Gaussian noises with pairwise correlations that decay exponentially with the difference between the preferred angles of the correlated cells. We assume that the system is broadly tuned, which means that both the correlation length and the width of the tuning curves of the mean responses span a substantial fraction of the entire system length. The performance of the system is measured by the Fisher information (FI), which bounds its estimation error. By calculating the FI in the limit of a large N, we show that positive correlations decrease the estimation capability of the network, relative to the uncorrelated population. The information capacity saturates to a finite value as the number of cells in the population grows. In contrast, negative correlations substantially increase the information capacity of the neuronal population. These results are supplemented by the effect of correlations on the mutual information of the system. Our analysis provides an estimate of the effective number of statistically independent degrees of freedom, denoted N(eff), that a large correlated system can have. According to our theory N(eff) remains finite in the limit of a large N. Estimating the parameters of the correlations and tuning curves from experimental data in some cortical areas that code for angles, we predict that the number of effective degrees of freedom embedded in localized populations in these areas is less than or of the order of approximately 10(2).
外部事件的神经元表征通常分布在大量细胞群体中。我们研究相关噪声对这些神经元群体编码准确性的影响。我们的主要问题是,在存在相关噪声的情况下,群体编码中的固有误差是否可以通过增加群体大小N来抑制。我们使用一个神经元群体模型来解决这个问题,该模型对二维角度变量进行广泛调谐。神经元活动的波动被建模为高斯噪声,其成对相关性随着相关细胞偏好角度之间的差异呈指数衰减。我们假设系统是广泛调谐的,这意味着相关长度和平均反应调谐曲线的宽度都跨越了整个系统长度的很大一部分。系统的性能通过费希尔信息(FI)来衡量,它限制了系统的估计误差。通过在大N极限下计算FI,我们表明,相对于不相关的群体,正相关性会降低网络的估计能力。随着群体中细胞数量的增加,信息容量饱和到一个有限值。相比之下,负相关性会显著增加神经元群体的信息容量。相关性对系统互信息的影响补充了这些结果。我们的分析提供了一个大相关系统可能具有的统计独立自由度的有效数量N(eff)的估计。根据我们的理论,在大N极限下,N(eff)仍然是有限的。通过从一些编码角度的皮层区域的实验数据中估计相关性和调谐曲线的参数,我们预测这些区域局部群体中嵌入的有效自由度数量小于或约为10(2)量级。