GDAtools (version 2.1)

homog.test: Homogeneity test for a categorical supplementary variable

Description

From MCA results, computes a homogeneity test between categories of a supplementary variable, i.e. characterizes the homogeneity of several subclouds.

Usage

homog.test(resmca, var, dim = c(1,2))

Value

Returns a list of lists, one for each selected dimension in the MCA. Each list has 2 elements :

test.stat

The square matrix of test statistics

p.values

The square matrix of p-values

Arguments

resmca

object of class MCA, speMCA, csMCA, stMCA or multiMCA

var

the categorical supplementary variable. It does not need to have been used at the MCA step.

dim

the axes which are described. Default is c(1,2)

Author

Nicolas Robette

References

Le Roux B. and Rouanet H., Multiple Correspondence Analysis, SAGE, Series: Quantitative Applications in the Social Sciences, Volume 163, CA:Thousand Oaks (2010).

Le Roux B. and Rouanet H., Geometric Data Analysis: From Correspondence Analysis to Stuctured Data Analysis, Kluwer Academic Publishers, Dordrecht (June 2004).

See Also

supvar, supvars, dimtypicality

Examples

Run this code
# specific MCA of Music example data set
data(Music)
junk <- c("FrenchPop.NA", "Rap.NA", "Rock.NA", "Jazz.NA", "Classical.NA")
mca <- speMCA(Music[,1:5], excl = junk)
# homogeneity test for variable Age
homog.test(mca, Music$Age)

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