Multivariate descriptive statistical analysis

correspondence analysis and related techniques for large matrices

  • 3.00 ·
  • 1 Rating
  • 2 Want to read
  • 1 Currently reading
  • 1 Have read

My Reading Lists:

Create a new list

Check-In

×Close
Add an optional check-in date. Check-in dates are used to track yearly reading goals.
Today

  • 3.00 ·
  • 1 Rating
  • 2 Want to read
  • 1 Currently reading
  • 1 Have read

Buy this book

Last edited by Kaustubh Chakraborty
December 5, 2021 | History

Multivariate descriptive statistical analysis

correspondence analysis and related techniques for large matrices

  • 3.00 ·
  • 1 Rating
  • 2 Want to read
  • 1 Currently reading
  • 1 Have read

There is an excellent chapter which relates correspondence analysis to discriminant analysis and canonical correlation analysis. Another chapter discusses cluster analysis and includes an example in which clustering is combined with correspondence analysis. First the clustering partitions the data into homogeneous groups and then the corre- spondence plot shows how the groups differ on their response. For the reader with access to a program which manipulates matrices with facility and has good plotting facilities, it should be possible to implement the procedures fairly easily without recourse to the FORTRAN program.

Publish Date
Publisher
Wiley
Language
English
Pages
250

Buy this book

Previews available in: English

Book Details


Edition Notes

Bibliography: p. 223-228.
Translation of: Techniques de la description statistique.
Includes index.

Published in
New York
Series
Wiley series in probability and mathematical statistics.

Classifications

Dewey Decimal Class
519.5/35
Library of Congress
QA278 .L4213 1984, QA278

The Physical Object

Format
Hardcover
Pagination
xvi, 231 p. :
Number of pages
250
Weight
1 pounds

ID Numbers

Open Library
OL3179322M
Internet Archive
multivariatedesc0000leba
ISBN 10
0471867438
LCCN
83021904
OCLC/WorldCat
10100839
Library Thing
8096476
Goodreads
3691774

Work Description

This is a well-written and interesting book about techniques for displaying multi- variate data. Although the examples are applications to socioeconomic research, it is claimed that the methods can also be applied to the social sciences, medicine, biology, and geography. The primary focus is on correspondence analysis, with other techniques such as canonical correlation, discriminant analysis, and cluster analysis discussed in this context. One could conclude from the absence of exercises that the book is not intended as a text, but it certainly could be used for a class if supplemented with problems. The main prerequisite is linear algebra, but some calculus is used, too, including matrix derivatives and Lagrange multipliers. The style is informal, with techniques presented often in terms of the analysis of a particular data set, and there are no theorems presented as such. There are, however, some mathematical derivation. This is a clear, carefully written discussion of correspondence analysis, a methodology which deserves to be more widely known.

Links outside Open Library

Community Reviews (1)

Feedback?
Pace 1 Fast paced 100% Enjoyability 1 Exciting 50% Engaging 50% Clarity 1 Effective explanations 50% Clearly written 50% Difficulty 1 Intermediate 100% Breadth 1 Focused 100% Genres 1 Reference 25% Technical 25% Textbook 25% Research 25% Style 1 Technical 100% Purpose 1 Learn about 100%

Lists

This work does not appear on any lists.

History

Download catalog record: RDF / JSON
December 5, 2021 Edited by Kaustubh Chakraborty Updated description.
March 11, 2019 Edited by Kaustubh Chakraborty Added new cover
March 11, 2019 Edited by Kaustubh Chakraborty Added link
February 5, 2010 Edited by WorkBot add more information to works
December 9, 2009 Created by WorkBot add works page