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itdr (version 2.0.1)

Integral Transformation Methods for SDR in Regression

Description

The itdr() routine allows for the estimation of sufficient dimension reduction subspaces in univariate regression such as the central mean subspace or central subspace in regression. This is achieved using Fourier transformation methods proposed by Zhu and Zeng (2006) , convolution transformation methods proposed by Zeng and Zhu (2010) , and iterative Hessian transformation methods proposed by Cook and Li (2002) . Additionally, mitdr() function provides optimal estimators for sufficient dimension reduction subspaces in multivariate regression by optimizing a discrepancy function using a Fourier transform approach proposed by Weng and Yin (2022) , and selects the sufficient variables using Fourier transform sparse inverse regression estimators proposed by Weng (2022) .

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Version

Install

install.packages('itdr')

Monthly Downloads

228

Version

2.0.1

License

GPL-2 | GPL-3

Maintainer

Tharindu P. De Alwis

Last Published

February 26th, 2024

Functions in itdr (2.0.1)

prostate

Prostate Levels
mitdr

Integral Transformation Methods for SDR Subspaces in Multivariate Regression
pdb

Planning Database (Published in year 2015)
hyperPara

Bootstrap Estimation for Hyperparameters.
raman

Raman Spectroscopy
itdr

Integral Transformation Methods of Estimating SDR Subspaces in Regression.
recumbent

Recumbent Cows
dsp

Distance Between Two Subspaces.
d.test

Dimension Selection Testing Methods for the Central Mean Subspace.
automobile

Automobiles Data
d.boots

Bootstrap Estimation for Dimension (d) of Sufficient Dimension Reduction Subspaces.