Multivariate Reduced Rank Regression PDF Download

Are you looking for read ebook online? Search for your book and save it on your Kindle device, PC, phones or tablets. Download Multivariate Reduced Rank Regression PDF full book. Access full book title Multivariate Reduced Rank Regression.

Multivariate Reduced-Rank Regression

Multivariate Reduced-Rank Regression
Author: Raja Velu
Publisher: Springer Science & Business Media
Total Pages: 269
Release: 2013-04-17
Genre: Mathematics
ISBN: 1475728530

Download Multivariate Reduced-Rank Regression Book in PDF, ePub and Kindle

In the area of multivariate analysis, there are two broad themes that have emerged over time. The analysis typically involves exploring the variations in a set of interrelated variables or investigating the simultaneous relation ships between two or more sets of variables. In either case, the themes involve explicit modeling of the relationships or dimension-reduction of the sets of variables. The multivariate regression methodology and its variants are the preferred tools for the parametric modeling and descriptive tools such as principal components or canonical correlations are the tools used for addressing the dimension-reduction issues. Both act as complementary to each other and data analysts typically want to make use of these tools for a thorough analysis of multivariate data. A technique that combines the two broad themes in a natural fashion is the method of reduced-rank regres sion. This method starts with the classical multivariate regression model framework but recognizes the possibility for the reduction in the number of parameters through a restrietion on the rank of the regression coefficient matrix. This feature is attractive because regression methods, whether they are in the context of a single response variable or in the context of several response variables, are popular statistical tools. The technique of reduced rank regression and its encompassing features are the primary focus of this book. The book develops the method of reduced-rank regression starting from the classical multivariate linear regression model.


Multivariate Reduced-Rank Regression

Multivariate Reduced-Rank Regression
Author: Gregory C. Reinsel
Publisher: Springer Nature
Total Pages: 420
Release: 2022-11-30
Genre: Mathematics
ISBN: 1071627937

Download Multivariate Reduced-Rank Regression Book in PDF, ePub and Kindle

This book provides an account of multivariate reduced-rank regression, a tool of multivariate analysis that enjoys a broad array of applications. In addition to a historical review of the topic, its connection to other widely used statistical methods, such as multivariate analysis of variance (MANOVA), discriminant analysis, principal components, canonical correlation analysis, and errors-in-variables models, is also discussed. This new edition incorporates Big Data methodology and its applications, as well as high-dimensional reduced-rank regression, generalized reduced-rank regression with complex data, and sparse and low-rank regression methods. Each chapter contains developments of basic theoretical results, as well as details on computational procedures, illustrated with numerical examples drawn from disciplines such as biochemistry, genetics, marketing, and finance. This book is designed for advanced students, practitioners, and researchers, who may deal with moderate and high-dimensional multivariate data. Because regression is one of the most popular statistical methods, the multivariate regression analysis tools described should provide a natural way of looking at large (both cross-sectional and chronological) data sets. This book can be assigned in seminar-type courses taken by advanced graduate students in statistics, machine learning, econometrics, business, and engineering.


Multivariate Reduced-Rank Regression

Multivariate Reduced-Rank Regression
Author: Raja Velu
Publisher: Springer
Total Pages: 0
Release: 1998-09-18
Genre: Mathematics
ISBN: 9780387986012

Download Multivariate Reduced-Rank Regression Book in PDF, ePub and Kindle

In the area of multivariate analysis, there are two broad themes that have emerged over time. The analysis typically involves exploring the variations in a set of interrelated variables or investigating the simultaneous relation ships between two or more sets of variables. In either case, the themes involve explicit modeling of the relationships or dimension-reduction of the sets of variables. The multivariate regression methodology and its variants are the preferred tools for the parametric modeling and descriptive tools such as principal components or canonical correlations are the tools used for addressing the dimension-reduction issues. Both act as complementary to each other and data analysts typically want to make use of these tools for a thorough analysis of multivariate data. A technique that combines the two broad themes in a natural fashion is the method of reduced-rank regres sion. This method starts with the classical multivariate regression model framework but recognizes the possibility for the reduction in the number of parameters through a restrietion on the rank of the regression coefficient matrix. This feature is attractive because regression methods, whether they are in the context of a single response variable or in the context of several response variables, are popular statistical tools. The technique of reduced rank regression and its encompassing features are the primary focus of this book. The book develops the method of reduced-rank regression starting from the classical multivariate linear regression model.


Reduced Rank Regression

Reduced Rank Regression
Author: Heinz Schmidli
Publisher: Springer Science & Business Media
Total Pages: 189
Release: 2013-03-13
Genre: Mathematics
ISBN: 3642500153

Download Reduced Rank Regression Book in PDF, ePub and Kindle

Reduced rank regression is widely used in statistics to model multivariate data. In this monograph, theoretical and data analytical approaches are developed for the application of reduced rank regression in multivariate prediction problems. For the first time, both classical and Bayesian inference is discussed, using recently proposed procedures such as the ECM-algorithm and the Gibbs sampler. All methods are motivated and illustrated by examples taken from the area of quantitative structure-activity relationships (QSAR).


Modern Multivariate Statistical Techniques

Modern Multivariate Statistical Techniques
Author: Alan J. Izenman
Publisher: Springer Science & Business Media
Total Pages: 757
Release: 2009-03-02
Genre: Mathematics
ISBN: 0387781897

Download Modern Multivariate Statistical Techniques Book in PDF, ePub and Kindle

This is the first book on multivariate analysis to look at large data sets which describes the state of the art in analyzing such data. Material such as database management systems is included that has never appeared in statistics books before.


Reduced Rank Regression

Reduced Rank Regression
Author: Heinz Schmidli
Publisher:
Total Pages: 192
Release: 1995-07-27
Genre:
ISBN: 9783642500169

Download Reduced Rank Regression Book in PDF, ePub and Kindle


Sparse Multivariate Reduced-Rank Regression with Covariance Estimation

Sparse Multivariate Reduced-Rank Regression with Covariance Estimation
Author: Khalif Aly Halani
Publisher:
Total Pages: 26
Release: 2016
Genre:
ISBN:

Download Sparse Multivariate Reduced-Rank Regression with Covariance Estimation Book in PDF, ePub and Kindle

Multivariate multiple linear regression is multiple linear regression, but with multiple responses. Standard approaches assume that observations from different subjects are uncorrelated and so estimates of the regression parameters can be obtained through separate univariate regressions, regardless of whether the responses are correlated within subjects. There are three main extensions to the simplest model. The first assumes a low rank structure on the coefficient matrix that arises from a latent factor model linking predictors to responses. The second reduces the number of parameters through variable selection. The third allows for correlations between response variables in the low rank model. Chen and Huang propose a new model that falls under the reduced-rank regression framework, employs variable selection, and estimates correlations among error terms. This project reviews their model, describes its implementation, and reports the results of a simulation study evaluating its performance. The project concludes with ideas for further research.