Cart
Sign In

Sorry! Applied Multivariate Statistical Analysis is sold out.

Compare Products
Clear All
Let's Compare!

Applied Multivariate Statistical Analysis

This product has been sold out

pay
Rs  549
We will let you know when in stock
notify me

Featured

Highlights

  • Richard A. Johnson, Dean W. Wichern
  • ISBN13 : 9788120345874
  • ISBN10 : 8120345878
  • Language : English
  • Author : Richard A. Johnson, Dean W. Wichern
  • Publisher : Phi Learning
  • Pages : 796
  • Binding : Paperback
  • SUPC: SDL545176068

Other Specifications

Other Details
Country of Origin or Manufacture or Assembly India
Common or Generic Name of the commodity Statistics Books
Manufacturer's Name & Address
Packer's Name & Address
Marketer's Name & Address
Importer's Name & Address

Description


Book Description:
This classroom-tested text offers a readable introduction to the statistical analysis of multivariate observations. Its primary goal is to impart the necessary knowledge to make proper interpretations and select appropriate techniques for analyzing multivariate data.

It is suitable for courses in Multivariate Statistics, Marketing Research, Statistics in Education and postgraduate-level courses in Experimental Design and Statistics.

KEY FEATURES :

Accessible level: Presents the concepts and methods of multivariate analysis at a level that is readily understandable by readers who have taken two or more statistics courses.

Organization and approach: Contains the methodological “tools” of multivariate analysis.

An abundance of examples and exercises based on real data—Includes, in some cases, snapshots of the corresponding SAS output.

Emphasis on applications of multivariate methods.

A clear and insightful explanation of multivariate techniques.
Features:

Contents:
PREFACE 1. Aspects of Multivariate Analysis 2. Matrix Algebra and Random Vectors 3. Sample Geometry and Random Sampling 4. The Multivariate Normal Distribution 5. Inferences about a Mean Vector 6. Comparisons of Several Multivariate Means 7. Multivariate Linear Regression Models 8. Principal Components 9. Factor Analysis and Inferences for Structured Covariance Matrices 10. Canonical Correlation Analysis 11. Discrimination and Classification 12. Clustering, Distance Methods, and Ordination Appendix Data Index Subject Index
About the Author:
Richard A. Johnson is Professor in the Department of Statistics at the University of Wisconsin. |Dean W. Wichern is Professor Emeritus at the Mays School of Business at Texas A&M University.

Terms & Conditions

The images represent actual product though color of the image and product may slightly differ.

Quick links

Seller Details

View Store


New Seller
Expand your business to millions of customers