The polynomial kernels are widely used in machine learning and they are one of the default choices to develop kernel-based classification and regression models. However, they are rarely used and considered in numerical analysis due to their lack of strict positive definiteness. In particular they do not enjoy the usual property of unisolvency for arbitrary point sets, which is one of the key properties used to build kernel-based interpolation methods. This paper is devoted to establish some initial results for the study of these kernels, and their related interpolation algorithms, in the context of approximation theory. We will first prove necessary and sufficient conditions on point sets which guarantee the existence and uniqueness of an interpolant. We will then study the Reproducing Kernel Hilbert Spaces (or native spaces) of these kernels and their norms, and provide inclusion relations between spaces corresponding to different kernel parameters. With these spaces at hand, it will be further possible to derive generic error estimates which apply to sufficiently smooth functions, thus escaping the native space. Finally, we will show how to employ an efficient stable algorithm to these kernels to obtain accurate interpolants, and we will test them in some numerical experiment. After this analysis several computational and theoretical aspects remain open, and we will outline possible further research directions in a concluding section. This work builds some bridges between kernel and polynomial interpolation, two topics to which the authors, to different extents, have been introduced under the supervision or through the work of Stefano De Marchi. For this reason, they wish to dedicate this work to him in the occasion of his 60th birthday.
翻译:多核内核在机器学习中广泛使用,它们是开发内核分类和回归模型的默认选择之一。然而,由于缺乏严格的肯定性,它们很少在数字分析中被使用和考虑,特别是它们不享有任意点数组的常态不统一特性,这是用来建立内核内核内插方法的关键属性之一。本文件致力于为研究这些内核及其相关的内核计算法确定一些初步结果,以近似理论为背景。我们将首先在点数组上证明必要和充分的条件,从而保证内核的存在和独特性。我们随后将研究这些内核内核及其规范的Renel Hilbert空间(或本地空间)及其规范的不统一特性,提供与内核内核内核内核内核内核内核内核内核参数相对对应的空间之间的关系。有了这些空间,将进一步有可能得出适用于足够平稳的外核函数,从而摆脱本地空间。最后,我们将展示如何在点组内核内核内核内核内核内核内核内核的两部分使用一个高效的稳定算法 。我们将在这些内核内核内核内核分析中测试内核内核的内核内核内核内核内核内核内核内核内核分析中, 。我们将会继续测试内核内核内核研究。