Using the bootstrap to select one of a new class of dimension reduction methods

成果类型:
Article
署名作者:
Ye, ZS; Weiss, RE
署名单位:
Eli Lilly; Lilly Research Laboratories; University of California System; University of California Los Angeles
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.1198/016214503000000927
发表日期:
2003
页码:
968-979
关键词:
sliced inverse regression principal hessian directions binary response
摘要:
Dimension reduction in a regression analysis of response y given a p-dimensional vector of predictors x reduces the dimension of x by replacing it with a lower-dimensional linear combination beta'x of the x's without specifying a parametric model and without loss of information about the conditional distribution of y given x. We unify three existing methods, sliced inverse regression (SIR), sliced average variance estimate (SAVE), and principal Hessian directions (pHd), into a larger class of methods. Each method estimates a particular candidate matrix, essentially a matrix of parameters. We introduce broad classes of dimension reduction candidate matrices, and we distinguish estimators of the matrices from the matrices themselves. Given these classes of methods and several ways to estimate any matrix, we now have the problem of selecting a particular matrix and estimation method. We propose bootstrap methodology to select among candidate matrices, estimators and dimension, and in particular we investigate linear combinations of different methods.
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