
Partial Least Squares Regression
Description
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Through envelopes, much more has been learned about PLS regression, resulting in a mass of information that allows an envelope bridge that takes PLS regression from a black-box algorithm to a core statistical paradigm based on objective function optimization and, more generally, connects the applied sciences and statistics in the context of PLS. This book focuses on developing this bridge. It also covers uses of PLS outside of linear regression, including discriminant analysis, non-linear regression, generalized linear models and dimension reduction generally.
Key Features:
* Showcases the first serviceable method for studying high-dimensional regressions.
* Provides necessary background on PLS and its origin.
* R and Python programs are available for nearly all methods discussed in the book.
This book can be used as a reference and as a course supplement at the Master's level in Statistics and beyond. It will be of interest to both statisticians and applied scientists.
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Persons
Liliana Forzani is Full Professor, School of Chemical Engineering, National University of Litoral and principal researcher of CONICET (National Scientific and Technical Research Council), Argentina. Her contributions are in mathematical statistics, especially sufficient dimension reduction, abundance in regression and statistics for chemometrics. She established the first research group in statistics at her university after receiving her Ph.D in Statistics at the University of Minnesota. She has authored over 75 research articles in mathematics and statistics, and was recipient of the L'Oreal-Unesco-Conicet prize for Women in science.
Content
1. Introduction
2. Envelopes for Regression
3. PLS Algorithms for Predictor Reduction
4. Asymptotic Properties of PLS
5. Simultaneous Reduction
6. Partial PLS and Partial Envelopes
7. Linear Discriminant Analysis
8. Quadratic Discriminant Analysis
9. Nonlinear PLS
10. The Role of PLS in Social Science Path Analyses
11. Ancillary Topics
A. Proofs of Selected Results
Bibliography
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