Normal view MARC view ISBD view

Applied multivariate data analysis / Brian S. Everitt, Graham Dunn

Main Author Everitt,, Brian S. Coauthor Dunn,, Graham Publication London : Edward Arnold, 1991 Description XII, 304 p. : il. ISBN 0340545291 Abstract Índice: 1- Data and Statistics; 2- MAthematical and statistical background; 3- The initial examination multivariate data, 4- Reducing the dimensionality of multivariate data: Principal components and correspondence analysis; 5- Multidimensional scaling; 6- Cluster analysis; 7- The generalised linear model; 8- Regression and the analysis of variance; 9- Linear models for categorical data; 10- MOdels for rates and survival times; 11- Analysis of repesated measures; 12- Discriminant analysis; 13- Factor analysis; 14- Covariance structure models.
Resumo: The up-to-daye text includes modern techniques such as multidimensional scaling, cluster analysis, generalized linear models and structural equation models.
Topical name Sociologia
Estatística multivariada
Dados - Análise
Metodologia científica
CDU 303.01/.8
Tags from this library: No tags from this library for this title. Log in to add tags.
    average rating: 0.0 (0 votes)
Holdings
Item type Current location Call number Status Date due Barcode Item holds
Book Biblioteca IPAM Porto
303.01/.8 EVE 7183 Available 7183
Total holds: 0

Índice: 1- Data and Statistics; 2- MAthematical and statistical background; 3- The initial examination multivariate data, 4- Reducing the dimensionality of multivariate data: Principal components and correspondence analysis; 5- Multidimensional scaling; 6- Cluster analysis; 7- The generalised linear model; 8- Regression and the analysis of variance; 9- Linear models for categorical data; 10- MOdels for rates and survival times; 11- Analysis of repesated measures; 12- Discriminant analysis; 13- Factor analysis; 14- Covariance structure models.

Resumo: The up-to-daye text includes modern techniques such as multidimensional scaling, cluster analysis, generalized linear models and structural equation models.

There are no comments for this item.

Log in to your account to post a comment.