This paper makes 3 contributions. First, it generalizes the Lindeberg\textendash Feller and Lyapunov Central Limit Theorems to Hilbert Spaces by way of $L^2$. Second, it generalizes these results to spaces in which sample failure and missingness can occur. Finally, it shows that satisfaction of the Lindeberg\textendash Feller and Lyapunov Conditions in such spaces implies the satisfaction of the conditions in the completely observed space, and how this guarantees the consistency of inferences from the partial functional data. These latter two results are especially important given the increasing attention to statistical inference with partially observed functional data. This paper goes beyond previous research by providing simple boundedness conditions which guarantee that \textit{all} inferences, as opposed to some proper subset of them, will be consistently estimated. This is shown primarily by aggregating conditional expectations with respect to the space of missingness patterns. This paper appears to be the first to apply this technique.
翻译:本文提出了3项意见。 首先,该文件将Lindeberg\textendash Feller和Lyapunov中央限制理论概括为$L2$,将Libert空间的Lyapunov中心限制理论概括为Hilbert空间。第二,将这些结果概括为样本失败和缺失可能发生的空间。最后,它表明Lindeberg\textendash Feller和Lyapunov条件在这些空间的满意度意味着对完全观测空间的条件的满意度,以及这如何保证部分功能数据推断的一致性。后两个结果特别重要,因为人们越来越注意部分观察功能数据的统计推论。本文超越了以往的研究范围,提供了简单的界限条件,保证了对缺失模式空间的有条件期望,这主要表现在综合对缺失模式空间的有条件期望上。本文件似乎是第一个应用这一方法。