首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >BACKWARD NESTED DESCRIPTORS ASYMPTOTICS WITH INFERENCE ON STEM CELL DIFFERENTIATION
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BACKWARD NESTED DESCRIPTORS ASYMPTOTICS WITH INFERENCE ON STEM CELL DIFFERENTIATION

机译:倒置嵌套描述符渐近性,引起干细胞分化

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For sequences of random backward nested subspaces as occur, say, in dimension reduction for manifold or stratified space valued data, asymptotic results are derived. In fact, we formulate our results more generally for backward nested families of descriptors (BNFD). Under rather general conditions, asymptotic strong consistency holds. Under additional, still rather general hypotheses, among them existence of a.s. local twice differentiable charts, asymptotic joint normality of a BNFD can be shown. If charts factor suitably, this leads to individual asymptotic normality for the last element, a principal nested mean or a principal nested geodesic, say. It turns out that these results pertain to principal nested spheres (PNS) and principal nested great subsphere (PNGS) analysis by Jung, Dryden and Marron [Biometrika 99 (2012) 551-568] as well as to the intrinsic mean on a first geodesic principal component (IMolGPC) for manifolds and Kendall's shape spaces. A nested bootstrap two-sample test is derived and illustrated with simulations. In a study on real data, PNGS is applied to track early human mesenchymal stem cell differentiation over a coarse time grid and, among others, to locate a change point with direct consequences for the design of further studies.
机译:对于随机后向嵌套子空间的序列,例如,说,在歧管或分层空间值数据的尺寸减小中,导出渐近结果。事实上,我们更普遍为我们的结果制定我们的结果,以便向后嵌套的描述符(BNFD)。在相当一般的条件下,渐近强的一致性持有。在额外的情况下,仍然是普遍的假设,其中包括A.S.局部两次可分辨率图表,可以显示BNFD的渐近关节正常性。如果图表因子适当,这导致了最后一个元素的个体渐近常态,主体嵌套均值或主要嵌套的测地理位。事实证明,这些结果涉及jung,dryden和marron [Biometrika 99(2012)551-568]以及第一个测地中的内在平均值用于歧管和肯德尔的形状空间的主成分(IMOLGPC)。使用仿真和说明嵌套的引导两个样本测试。在对实际数据的研究中,PNGS用于跟踪粗时栅格的早期人间充质干细胞分化,以及其他,以定位改变点,以直接后果对进一步研究的设计。

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