4.6 Article

On a Projective Resampling Method for Dimension Reduction With Multivariate Responses

期刊

JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
卷 103, 期 483, 页码 1177-1186

出版社

AMER STATISTICAL ASSOC
DOI: 10.1198/016214508000000445

关键词

Central mean subspace; Central subspace; Monte Carlo integration; Multivariate nonlinear regression; Sliced average variance estimator; Sliced inverse regression

资金

  1. National Science Foundation [DMS-0405681, DMS-0704621]
  2. Research Grants Council of Hong Kong, Hong Kong, China

向作者/读者索取更多资源

Consider the dimension reduction problem where both the response and the predictor are vectors. Existing estimators of this problem take one of the following routes: (1) targeting the part of the dimension reduction space that is related to the conditional mean (or moments) of the response space directly by multivariate slicing. However, the first two approaches do not fully recover the dimension reduction space, and the third is hampered by the fact that the accuracy of estimators based on multivariate slicing drops sharply as the dimension of response increases-a phenomenon often called the ''curse of dimensionality''. We propose a new method that overcomes both difficulties, in that it involves univariate slicing only and it is guaranteed to fully recover the dimension reduction space under reasonable conditions. The method will be compared with the existing estimators by simulation and applied to a dataset.

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