In this paper we study $L_2$-norm sampling discretization and sampling recovery of complex-valued functions in RKHS on $D \subset \R^d$ based on random function samples. We only assume the finite trace of the kernel (Hilbert-Schmidt embedding into $L_2$) and provide several concrete estimates with precise constants for the corresponding worst-case errors. In general, our analysis does not need any additional assumptions and also includes the case of non-Mercer kernels and also non-separable RKHS. The fail probability is controlled and decays polynomially in $n$, the number of samples. Under the mild additional assumption of separability we observe improved rates of convergence related to the decay of the singular values. Our main tool is a spectral norm concentration inequality for infinite complex random matrices with independent rows complementing earlier results by Rudelson, Mendelson, Pajor, Oliveira and Rauhut.
翻译:在本文中,我们根据随机功能样本,用$D\subset\R ⁇ d$,研究RKHS中复杂价值的功能的低温采样分解和采样回收成本为$L_2美元,我们只假设内核的有限痕量(Hilbert-Schmidt嵌入到$L_2美元),并提供若干具体估计,对相应的最坏情况错误提供精确的常数。一般来说,我们的分析不需要任何额外的假设,还包括非遗传内核和不可分离的RKHS。失败概率是用美元控制的,并会以多元方式衰减,样本的数量。在较轻微的分离假设下,我们观察到与单值衰减有关的趋同率有所改善。我们的主要工具是,对无穷的复杂随机矩阵的光谱规范浓度不平等,独立行补充了Rudelson、Mendelson、Pajor、Oliveira和Rauhut的早期结果。