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MBRDR: R-package for response dimension reduction in multivariate regression

Title
MBRDR: R-package for response dimension reduction in multivariate regression
Authors
AhnHeesungYooJae Keun
Ewha Authors
유재근
SCOPUS Author ID
유재근scopus
Issue Date
2024
Journal Title
Communications for Statistical Applications and Methods
ISSN
2287-7843JCR Link
Citation
Communications for Statistical Applications and Methods vol. 31, no. 2, pp. 179 - 189
Keywords
multivariate regressionnonparametric reductionprincipal fitted response reductionprinicipal response reductionR-packageunstructured principal response reduction
Publisher
Korean Statistical Society
Indexed
SCOPUS; KCI scopus
Document Type
Article
Abstract
In multivariate regression with a high-dimensional response Y ε Rr and a relatively low-dimensional predictor X ε Rp (where r ≥ 2), the statistical analysis of such data presents significant challenges due to the exponential increase in the number of parameters as the dimension of the response grows. Most existing dimension reduction techniques primarily focus on reducing the dimension of the predictors (X), not the dimension of the response variable (Y). Yoo and Cook (2008) introduced a response dimension reduction method that preserves information about the conditional mean E(Y|X). Building upon this foundational work, Yoo (2018) proposed two semi-parametric methods, principal response reduction (PRR) and principal fitted response reduction (PFRR), then expanded these methods to unstructured principal fitted response reduction (UPFRR) (Yoo, 2019). This paper reviews these four response dimension reduction methodologies mentioned above. In addition, it introduces the implementation of the mbrdr package in R. The mbrdr is a unique tool in the R community, as it is specifically designed for response dimension reduction, setting it apart from existing dimension reduction packages that focus solely on predictors. © (2024) The Korean Statistical Society, and Korean International Statistical Society. All rights reserved.
DOI
10.29220/CSAM.2024.31.2.179
Appears in Collections:
자연과학대학 > 통계학전공 > Journal papers
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