We introduce a construction of multiscale tight frames on general domains. The frame elements are obtained by spectral filtering of the integral operator associated with a reproducing kernel. Our construction extends classical wavelets as well as generalized wavelets on both continuous and discrete non-Euclidean structures such as Riemannian manifolds and weighted graphs. Moreover, it allows to study the relation between continuous and discrete frames in a random sampling regime, where discrete frames can be seen as Monte Carlo estimates of the continuous ones. Pairing spectral regularization with learning theory, we show that a sample frame tends to its population counterpart, and derive explicit finite-sample rates on spaces of Sobolev and Besov regularity. Our results prove the stability of frames constructed on empirical data, in the sense that all stochastic discretizations have the same underlying limit regardless of the set of initial training samples.
翻译:我们引入了通用域的多尺度紧身框架。 框架元素是通过与再生内核相关的整体操作器的光谱过滤获得的。 我们的构造将古典波子以及普通波子延伸至连续和离散的非欧裔结构, 如里曼尼的元体和加权图形。 此外, 它允许在随机抽样系统中研究连续和离散框架之间的关系, 离散框架可以被视为蒙特卡洛对连续框架的估计。 将光谱规范化与学习理论相匹配, 我们显示样本框架倾向于其人口对应方, 并得出索博列夫和贝索夫常规空间的明确的有限抽样率。 我们的结果证明了根据经验数据构建的框架的稳定性, 也就是说,所有随机的离散化框架都具有相同的基本限制, 不论初始训练样本的设置如何 。