Covariance estimation is ubiquitous in functional data analysis. Yet, the case of functional observations over multidimensional domains introduces computational and statistical challenges, rendering the standard methods effectively inapplicable. To address this problem, we introduce Covariance Networks (CovNet) as a modeling and estimation tool. The CovNet model is universal -- it can be used to approximate any covariance up to desired precision. Moreover, the model can be fitted efficiently to the data and its neural network architecture allows us to employ modern computational tools in the implementation. The CovNet model also admits a closed-form eigen-decomposition, which can be computed efficiently, without constructing the covariance itself. This facilitates easy storage and subsequent manipulation in the context of the CovNet. Moreover, we establish consistency of the proposed estimator and derive its rate of convergence. The usefulness of the proposed method is demonstrated by means of an extensive simulation study.
翻译:在功能数据分析中,共变性估计是普遍存在的,然而,对多维领域的功能观测案例提出了计算和统计挑战,使得标准方法无法有效适用。为了解决这一问题,我们引入了共变网络(CovNet)作为模型和估算工具。CovNet模型是普遍的 -- -- 可以用来将任何共变相相相近,达到预期的精确度。此外,该模型可以有效地适应数据,其神经网络结构使我们能够在执行中采用现代计算工具。CovNet模型还承认一种封闭式的异种分解装置,可以有效计算,而无需构建共变体本身。这便于在CovNet背景下进行易于存储和随后的操作。此外,我们建立拟议的估计器的一致性,并得出其趋同率。拟议方法的有用性通过广泛的模拟研究得到证明。