Title of article
Series expansion for functional sufficient dimension reduction
Author/Authors
Lian، نويسنده , , Heng and Li، نويسنده , , Gaorong، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2014
Pages
16
From page
150
To page
165
Abstract
Functional data are infinite-dimensional statistical objects which pose significant challenges to both theorists and practitioners. Both parametric and nonparametric regressions have received attention in the functional data analysis literature. However, the former imposes stringent constraints while the latter suffers from logarithmic convergence rates. In this article, we consider two popular sufficient dimension reduction methods in the context of functional data analysis, which, if desired, can be combined with low-dimensional nonparametric regression in a later step. In computation, predictor processes and index vectors are approximated in finite dimensional spaces using the series expansion approach. In theory, the basis used can be either fixed or estimated, which include both functional principal components and B -spline basis. Thus our study is more general than previous ones. Numerical results from simulations and a real data analysis are presented to illustrate the methods.
Keywords
functional principal component analysis , Polynomial splines , Sliced average variance estimation , Sliced inverse regression
Journal title
Journal of Multivariate Analysis
Serial Year
2014
Journal title
Journal of Multivariate Analysis
Record number
1566574
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