An introduction to envelopes: dimension reduction for efficient estimation in multivariate statistics
RD Cook - 2018 - books.google.com
Written by the leading expert in the field, this text reviews the major new developments in
envelope models and methods An Introduction to Envelopes provides an overview of the …
envelope models and methods An Introduction to Envelopes provides an overview of the …
[КНИГА][B] Multiple linear regression
DJ Olive, DJ Olive - 2017 - Springer
Multiple Linear Regression | SpringerLink Skip to main content Advertisement SpringerLink
Account Menu Find a journal Publish with us Track your research Search Cart Book cover Linear …
Account Menu Find a journal Publish with us Track your research Search Cart Book cover Linear …
Parsimonious tensor response regression
Aiming at abundant scientific and engineering data with not only high dimensionality but
also complex structure, we study the regression problem with a multidimensional array …
also complex structure, we study the regression problem with a multidimensional array …
Principal components, sufficient dimension reduction, and envelopes
RD Cook - Annual Review of Statistics and Its Application, 2018 - annualreviews.org
We review probabilistic principal components, principal fitted components, sufficient
dimension reduction, and envelopes, arguing that at their core they are all based on …
dimension reduction, and envelopes, arguing that at their core they are all based on …
Envelopes and partial least squares regression
We build connections between envelopes, a recently proposed context for efficient
estimation in multivariate statistics, and multivariate partial least squares (PLS) regression …
estimation in multivariate statistics, and multivariate partial least squares (PLS) regression …
Foundations for envelope models and methods
Envelopes were recently proposed by Cook, Li and Chiaromonte as a method for reducing
estimative and predictive variations in multivariate linear regression. We extend their …
estimative and predictive variations in multivariate linear regression. We extend their …
Matrix variate regressions and envelope models
Modern technology often generates data with complex structures in which both response
and explanatory variables are matrix valued. Existing methods in the literature can tackle …
and explanatory variables are matrix valued. Existing methods in the literature can tackle …
[КНИГА][B] Robust multivariate analysis
DJ Olive, DJ Olive, Chernyk - 2017 - Springer
Statistics is the science of extracting useful information from data, and a statistical model is
used to provide a useful approximation to some of the important characteristics of the …
used to provide a useful approximation to some of the important characteristics of the …
Envelope-based sparse partial least squares
Sparse partial least squares (SPLS) is widely used in applied sciences as a method that
performs dimension reduction and variable selection simultaneously in linear regression …
performs dimension reduction and variable selection simultaneously in linear regression …
A bayesian approach for envelope models
A Bayesian approach for envelope models Page 1 The Annals of Statistics 2017, Vol. 45, No.
1, 196–222 DOI: 10.1214/16-AOS1449 © Institute of Mathematical Statistics, 2017 A …
1, 196–222 DOI: 10.1214/16-AOS1449 © Institute of Mathematical Statistics, 2017 A …