Jenison Rick L, Reale Richard A
Departments of Psychology and Physiology and the Waisman Center, University of Wisconsin-Madison, Madison, WI 53706, USA.
Neural Comput. 2004 Apr;16(4):665-72. doi: 10.1162/089976604322860659.
The product-moment correlation coefficient is often viewed as a natural measure of dependence. However, this equivalence applies only in the context of elliptical distributions, most commonly the multivariate gaussian, where linear correlation indeed sufficiently describes the underlying dependence structure. Should the true probability distributions deviate from those with elliptical contours, linear correlation may convey misleading information on the actual underlying dependencies. It is often the case that probability distributions other than the gaussian distribution are necessary to properly capture the stochastic nature of single neurons, which as a consequence greatly complicates the construction of a flexible model of covariance. We show how arbitrary probability densities can be coupled to allow greater flexibility in the construction of multivariate neural population models.
积矩相关系数通常被视为一种自然的相依性度量。然而,这种等价性仅适用于椭圆分布的情形,最常见的是多元高斯分布,在这种情况下,线性相关确实足以描述潜在的相依结构。如果真实概率分布偏离具有椭圆轮廓的分布,线性相关可能会在实际潜在相依性方面传递误导性信息。通常情况下,除了高斯分布之外的概率分布对于正确捕捉单个神经元的随机性质是必要的,这使得构建灵活的协方差模型变得极为复杂。我们展示了如何耦合任意概率密度,以便在构建多元神经群体模型时具有更大的灵活性。