We address the problem of approximating an unknown function from its discrete samples given at arbitrarily scattered sites. This problem is essential in numerical sciences, where modern applications also highlight the need for a solution to the case of functions with manifold values. In this paper, we introduce and analyze a combination of kernel-based quasi-interpolation and multiscale approximations for both scalar- and manifold-valued functions. While quasi-interpolation provides a powerful tool for approximation problems if the data is defined on infinite grids, the situation is more complicated when it comes to scattered data. Hence, this paper is particularly interested in studying the improvement achieved by combining quasi-interpolation with a multiscale technique. The main contributions of this paper are as follows. First, we introduce the multiscale quasi-interpolation technique for scalar-valued functions. Second, we show how this technique can be carried over to the manifold-valued setting. Third, we give mathematical proof that converging quasi-interpolation will also lead to converging multiscale quasi-interpolation. Fourth, we provide ample numerical evidence that multiscale quasi-interpolation has superior convergence to quasi-interpolation. In addition, we will provide examples showing that the multiscale quasi-interpolation approach offers a powerful tool for many data analysis tasks, such as denoising and anomaly detection. It is especially attractive for cases of massive data points and high-dimensionality.
翻译:在任意分散的场地上,我们处理从离散的样本中接近一个未知功能的问题。这个问题在数字科学中至关重要,因为在数字科学中,现代应用也突显出需要用多种价值的功能来解决这个问题。在本文件中,我们采用和分析以内核为基础的准内插和多尺度近似的组合,用于标度和多重价值的功能。虽然准内插为在无限网格上界定数据时的近似问题提供了强大的工具,但当数据分散时,情况会更加复杂。因此,本文件特别有兴趣研究通过将准内插与多尺度技术相结合而取得的改进。本文的主要贡献如下:首先,我们采用多种规模的准内插和多尺度的近似近似近似近似技术,用于计算标度和多重价值的功能。第二,我们展示了这一技术如何延续到多重价值的设置。第三,我们从数学角度证明,在准内插图中,混杂的准内插还会导致多尺度的准内插。第四,我们提供了充分的数字证据,通过多尺度的准内插法进行高层次的跨级的跨级的相互分析,从而展示了多层次的数据分析。作为跨级的跨级的跨级的跨级的跨级的跨级分析。我们提供的许多数据分析。