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mbrdr (version 1.1.1)

Model-Based Response Dimension Reduction

Description

Functions for model-based response dimension reduction. Usual dimension reduction methods in multivariate regression focus on the reduction of predictors, not responses. The response dimension reduction is theoretically founded in Yoo and Cook (2008) . Later, three model-based response dimension reduction approaches are proposed in Yoo (2016) and Yoo (2019) . The method by Yoo and Cook (2008) is based on non-parametric ordinary least squares, but the model-based approaches are done through maximum likelihood estimation. For two model-based response dimension reduction methods called principal fitted response reduction and unstructured principal fitted response reduction, chi-squared tests are provided for determining the dimension of the response subspace.

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Version

Install

install.packages('mbrdr')

Monthly Downloads

275

Version

1.1.1

License

GPL (>= 2.0)

Maintainer

Jae Yoo

Last Published

January 24th, 2022

Functions in mbrdr (1.1.1)

choose.fx

choose fx for principal fitted response reduction and unstructured principal fitted response reduction
SIGMAS

compute all required SIGMA matrices for "pfrr" and "upfrr"
mbrdr.x

Accessor functions for data in dr objects
mps

Minneapolis School dataset
mbrdr

Main function for model-based response dimension reduction regression
matpower

compute the M^power where M is a symmetric matrix.