论文标题
可分离扩展以进行协方差估计
Separable Expansions for Covariance Estimation
论文作者
论文摘要
协方差的非参数估计是功能数据分析的核心,无论是曲线还是表面值数据。二维领域的情况既带来统计和计算挑战,通常通过假设可分离性来缓解。但是,可分离性通常是值得怀疑的,有时甚至是不足的。我们提出了一个框架,用于分析随机表面的协方差操作员,该框架可以使可分离性概括,同时保留其主要优势。我们的方法基于将协方差扩展为一系列可分离术语。该扩展对于在二维域上的任何协方差都是有效的。利用部分内部产品的关键概念,我们将功率迭代方法扩展到一般的希尔伯特空间,并展示如何在实践中有效地构建上述扩展。扩展和保留的截断会自动诱导协方差的非参数估计量,其简约由截断水平决定。相对于可分离性,可以用很少的计算开销来计算,存储和操纵所得的估计器。一致性和收敛速率在轻度的规律性假设下得出,这说明了偏差与截断水平调节的方差之间的权衡。在全面的模拟研究和脑电图分类中证明了拟议方法论的优点和实际表现。
The non-parametric estimation of covariance lies at the heart of functional data analysis, whether for curve or surface-valued data. The case of a two-dimensional domain poses both statistical and computational challenges, which are typically alleviated by assuming separability. However, separability is often questionable, sometimes even demonstrably inadequate. We propose a framework for the analysis of covariance operators of random surfaces that generalises separability, while retaining its major advantages. Our approach is based on the expansion of the covariance into a series of separable terms. The expansion is valid for any covariance over a two-dimensional domain. Leveraging the key notion of the partial inner product, we extend the power iteration method to general Hilbert spaces and show how the aforementioned expansion can be efficiently constructed in practice. Truncation of the expansion and retention of the leading terms automatically induces a non-parametric estimator of the covariance, whose parsimony is dictated by the truncation level. The resulting estimator can be calculated, stored and manipulated with little computational overhead relative to separability. Consistency and rates of convergence are derived under mild regularity assumptions, illustrating the trade-off between bias and variance regulated by the truncation level. The merits and practical performance of the proposed methodology are demonstrated in a comprehensive simulation study and on classification of EEG signals.