Abstract Functional envelope for model-free sufficient dimension reduction
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Functional envelope for model-free sufficient dimension reduction

机译:无模型足够尺寸减少的功能包络

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AbstractIn this article, we introduce the functional envelope for sufficient dimension reduction and regression with functional and longitudinal data. Functional sufficient dimension reduction methods, especially the inverse regression estimation family of methods, usually involve solving generalized eigenvalue problems and inverting the infinite-dimensional covariance operator. With the notion of functional envelope, essentially a special type of sufficient dimension reduction subspace, we develop a generic method to circumvent the difficulties in solving the generalized eigenvalue problems and inverting the covariance directly. We derive the geometric characteristics of the functional envelope and establish the asymptotic properties of related functional envelope estimators under mild conditions. The functional envelope estimators have shown promising performance in extensive simulation studies and real data analysis.]]>
机译:<![cdata [ Abstract 在本文中,我们介绍了功能性和纵向数据的足够尺寸减少和回归的功能包络。功能足够的尺寸减少方法,尤其是逆回归估计家族的方法,通常涉及求解广义的特征值问题并反转无限维协方差操作员。随着功能包络的概念,基本上是一种特殊类型的足够的足够的尺寸减少子空间,我们开发了一种通用方法,以规避解决广义特征值问题并直接反转协方差的困难。我们推出了功能包络的几何特征,并在温和条件下建立了相关功能包络估计器的渐近性质。功能包络估计器在广泛的模拟研究和实际数据分析中显示了有希望的性能。 ]]>

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