The Mat\'ern and the Generalized Cauchy families of covariance functions have a prominent role in spatial statistics as well as in a wealth of statistical applications. The Mat\'ern family is crucial to index mean-square differentiability of the associated Gaussian random field; the Cauchy family is a decoupler of the fractal dimension and Hurst effect for Gaussian random fields that are not self-similar. Our effort is devoted to prove that a scale-dependent family of covariance functions, obtained as a reparameterization of the Generalized Cauchy family, converges to a particular case of the Mat\'ern family, providing a somewhat surprising bridge between covariance models with light tails and covariance models that allow for long memory effect.
翻译:具有共变功能的Mat\ ern 和 General Cauchy 家庭在空间统计以及大量统计应用中发挥着突出作用。 Mat\ ern 家庭对于将相关高斯随机场的均分差异指数化至关重要; Cauchy 家庭是高斯随机场的分形尺寸和Hurst 效应的脱钩者,对于高斯随机场而言,两者并不相像。 我们致力于证明,作为普遍康奇家族的重新校准而获得的基于规模的共变函数家庭,与马特· 埃尔恩家庭的一个特定案例汇合在一起,为具有光尾和允许长期记忆效果的共变模型之间的共变模型提供了某种令人惊讶的桥梁。