Multiple Factor Analysis by Example Using R

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A01=Jerome Pages
advanced multivariate analysis in R
Author_Jerome Pages
Canonical Analysis
Canonical Variables
Category=JMB
Category=PBT
Category=UFM
Correlation Circle
Correlation Ratios
correspondances
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
Euclidean vector spaces
FactoMineR
factor analysis for mixed data
Hedonic Assessments
hierarchical clustering techniques
hierarchical MFA
Indscal Model
inertia
Initial Variables
matrix algebra applications
MFA
mixed variable modeling
Multiple Correlation Coefficient
multiple correspondence analysis
multiple factor analysis
Multiple factor analysis (MFA)
orange
Partial Clouds
Partial Points
pcas
PLS
principal component analysis
principal component analysis and multiple correspondence analysis
Procrustes analysis
qualitative
Qualitative Variable
quantitative
quantitative research methods
Quantitative Variables
R software
Relationship Square
Scalar Product
separate
Separate PCA
Squared Correlation Coefficient
Squared Correlation Ratio
Standardise PCA
statistical data analysis
Synthetic Variables
total
Total Inertia
variable
variables
Weighted PCA

Product details

  • ISBN 9781482205473
  • Weight: 514g
  • Dimensions: 156 x 234mm
  • Publication Date: 20 Nov 2014
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Multiple factor analysis (MFA) enables users to analyze tables of individuals and variables in which the variables are structured into quantitative, qualitative, or mixed groups. Written by the co-developer of this methodology, Multiple Factor Analysis by Example Using R brings together the theoretical and methodological aspects of MFA. It also includes examples of applications and details of how to implement MFA using an R package (FactoMineR).

The first two chapters cover the basic factorial analysis methods of principal component analysis (PCA) and multiple correspondence analysis (MCA). The next chapter discusses factor analysis for mixed data (FAMD), a little-known method for simultaneously analyzing quantitative and qualitative variables without group distinction. Focusing on MFA, subsequent chapters examine the key points of MFA in the context of quantitative variables as well as qualitative and mixed data. The author also compares MFA and Procrustes analysis and presents a natural extension of MFA: hierarchical MFA (HMFA). The final chapter explores several elements of matrix calculation and metric spaces used in the book.

Jérôme Pagès is a professor of statistics at Agrocampus (Rennes, France), where he heads the Laboratory of Applied Mathematics (LMA²).

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