论文标题
条件期望运算符的非参数近似
Nonparametric approximation of conditional expectation operators
论文作者
论文摘要
鉴于在某些第二个可计数的局部紧凑型豪斯多夫空间上的两个随机变量的联合分布$ x,y $,我们研究了由$ [pf](x)(x):= \ m mathbb {e} [f(y)[f(y中x = x] $下的$ l^2 $ - 操作器的统计近似值。通过修改其域,我们证明了$ P $可以由Hilbert-Schmidt运营商在运营商规范中任意近似,该操作员在复制的内核Hilbert Space上作用。这个事实允许有限级运营商在密集的子空间上统一估算$ p $,即使$ p $不紧凑。在收敛模式方面,我们因此获得了基于内核技术的优越性,而不是诸如Galerkin方法之类的经典参数投影方法。这也提供了一种新颖的观点,即限制对象的非参数估计为$ p $。作为应用程序,我们表明这些结果对于马尔可夫过渡运营商的大型光谱分析技术尤为重要。我们的研究还为所谓的内核条件均值嵌入提供了新的渐近视角,这是基于内核的非参数推断中各种技术的理论基础。
Given the joint distribution of two random variables $X,Y$ on some second countable locally compact Hausdorff space, we investigate the statistical approximation of the $L^2$-operator defined by $[Pf](x) := \mathbb{E}[ f(Y) \mid X = x ]$ under minimal assumptions. By modifying its domain, we prove that $P$ can be arbitrarily well approximated in operator norm by Hilbert-Schmidt operators acting on a reproducing kernel Hilbert space. This fact allows to estimate $P$ uniformly by finite-rank operators over a dense subspace even when $P$ is not compact. In terms of modes of convergence, we thereby obtain the superiority of kernel-based techniques over classically used parametric projection approaches such as Galerkin methods. This also provides a novel perspective on which limiting object the nonparametric estimate of $P$ converges to. As an application, we show that these results are particularly important for a large family of spectral analysis techniques for Markov transition operators. Our investigation also gives a new asymptotic perspective on the so-called kernel conditional mean embedding, which is the theoretical foundation of a wide variety of techniques in kernel-based nonparametric inference.