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Introduction to multivariate data / by Trevor Cox

By: Material type: TextTextLanguage: English Publication details: Wiley-Blackwell Publishing, 2014.Description: vii, 232 pISBN:
  • 9780470689189
Subject(s): DDC classification:
  • 519.535 COX-I
Contents:
1.Introduction-- 2. Matrix algebra-- 3.Basic multivariate statistics-- 4.Graphical representation of multivariate data-- 5. Principal components analysis-- 6. Biplots-- 7.Correspondence analysis-- 8.Cluster analysis-- 9. Multidimensional scaling-- 10. Linear regression analysis-- 11.Multivariate analysis of variance-- 12.Canonical correlation analysis-- 13.Discriminant analysis and canonical variates analysis-- 14. Loglinear modelling-- 15.Factor analysis-- 16.Other latent variable models. Graphical modelling. Data mining.
Summary: Multivariate data appear in all scientific fields of investigation and the study of multivariate analysis has become central to the discipline of data science. This title explains how to successfully reduce a set of data with many variables to a manageable formulation where information, structure and underlying patterns are more clearly revealed.
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Item type Current library Collection Call number Status Date due Barcode Item holds
Books Books Library, SPAB G-1 Non Fiction 519.535 COX-I (Browse shelf(Opens below)) Available 009454
Total holds: 0

1.Introduction--
2. Matrix algebra--
3.Basic multivariate statistics--
4.Graphical representation of multivariate data--
5. Principal components analysis--
6. Biplots--
7.Correspondence analysis--
8.Cluster analysis--
9. Multidimensional scaling--
10. Linear regression analysis--
11.Multivariate analysis of variance--
12.Canonical correlation analysis--
13.Discriminant analysis and canonical variates analysis--
14. Loglinear modelling--
15.Factor analysis--
16.Other latent variable models. Graphical modelling. Data mining.

Multivariate data appear in all scientific fields of investigation and the study of multivariate analysis has become central to the discipline of data science. This title explains how to successfully reduce a set of data with many variables to a manageable formulation where information, structure and underlying patterns are more clearly revealed.

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