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Dimension reduction based on weighted variance estimate

Dimension reduction based on weighted variance estimate
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摘要 In this paper, we propose a new estimate for dimension reduction, called the weighted variance estimate (WVE), which includes Sliced Average Variance Estimate (SAVE) as a special case. Bootstrap method is used to select the best estimate from the WVE and to estimate the structure dimension. And this selected best estimate usually performs better than the existing methods such as Sliced Inverse Regression (SIR), SAVE, etc. Many methods such as SIR, SAVE, etc. usually put the same weight on each observation to estimate central subspace (CS). By introducing a weight function, WVE puts different weights on different observations according to distance of observations from CS. The weight function makes WVE have very good performance in general and complicated situations, for example, the distribution of regressor deviating severely from elliptical distribution which is the base of many methods, such as SIR, etc. And compared with many existing methods, WVE is insensitive to the distribution of the regressor. The consistency of the WVE is established. Simulations to compare the performances of WVE with other existing methods confirm the advantage of WVE. In this paper, we propose a new estimate for dimension reduction, called the weighted variance estimate (WVE), which includes Sliced Average Variance Estimate (SAVE) as a special case. Bootstrap method is used to select the best estimate from the WVE and to estimate the structure dimension. And this selected best estimate usually performs better than the existing methods such as Sliced Inverse Regression (SIR), SAVE, etc. Many methods such as SIR, SAVE, etc. usually put the same weight on each observation to estimate central subspace (CS). By introducing a weight function, WVE puts different weights on different observations according to distance of observations from CS. The weight function makes WVE have very good performance in general and complicated situations, for example, the distribution of regressor deviating severely from elliptical distribution which is the base of many methods, such as SIR, etc. And compared with many existing methods, WVE is insensitive to the distribution of the regressor. The consistency of the WVE is established. Simulations to compare the performances of WVE with other existing methods confirm the advantage of WVE.
出处 《Science China Mathematics》 SCIE 2009年第3期539-560,共22页 中国科学:数学(英文版)
基金 supported by National Natural Science Foundation of China (Grant No. 10771015)
关键词 central subspace contour regression sliced average variance estimate sliced inverse regression sufficient dimension reduction weight function 62G08 62H05 central subspace contour regression sliced average variance estimate sliced inverse regression sufficient dimension reduction weight function
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参考文献22

  • 1Li B,Zha H,Chiaromente F.Contour Regression: a general approach to dimension reduction. The Annals of Statistics . 2005
  • 2Xia Y,Tong H,Li W K, et al.An adaptive estimation of dimension reduction space. Journal of the Royal Statistical Society . 2002
  • 3Cook R D,Nachtsheim C J.Reweighting to achieve elliptically contoured covariates in regression. Journal of the American Statistical Association . 1994
  • 4Ye Z,Weiss R E.Using the bootstrap to select one of a new class of dimension reduction methods. Journal of the American Statistical Association . 2003
  • 5Zhu L X,Ohtaki M,Li Y X.On hybrid method inverse regression-based algorithms. Comput Statist Data Anal . 2007
  • 6Cook R D.SAVE: a method for dimension reduction and graphics in regression. Communications in Statistics Theory and Methods . 2000
  • 7Zhao J L,Xu X Z,Ma J J.Extending SAVE and PHD. Communications in Statistics Theory and Methods . 2007
  • 8Li Y X,Zhu L X.Asymptotics for sliced average variance estimation. The Annals of Statistics . 2007
  • 9Wang H S,Ni L Q,Tsai C L.Improving dimension reduction via contour-projection. Statistica Sinica . 2008
  • 10Li K C.Nonlinear confounding in high-dimensional regression. The Annals of Statistics . 1997

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