This paper considers the problem of reconstructing missing parts of functions based on their observed segments. It provides, for Gaussian processes and arbitrary bijective transformations thereof, theoretical expressions for the $L^2$-optimal reconstruction of the missing parts. These functions are obtained as solutions of explicit integral equations. In the discrete case, approximations of the solutions provide consistent expressions of all missing values of the processes. Rates of convergence of these approximations, under extra assumptions on the transformation function, are provided. In the case of Gaussian processes with a parametric covariance structure, the estimation can be conducted separately for each function, and yields nonlinear solutions in presence of memory. Simulated examples show that the proposed reconstruction indeed fares better than the conventional interpolation methods in various situations.
翻译:本文根据所观察到的部分对功能缺失部分进行重建的问题。 对于高斯进程及其任意的双向转换,本文件为缺失部分的重建提供了理论表达方式。这些功能是作为明确整体方程式的解决方案获得的。在离散的情况下,解决方案的近似提供了所有进程缺失值的一致表达方式。根据对转换功能的额外假设,提供了这些近似的趋同率。对于带有参数共变结构的高斯进程,可以对每项功能分别进行估算,并在记忆中产生非线性解决方案。模拟实例表明,提议的重建的确比各种情况下常规的相互调和方法要好。