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Computes a multiple correspondence analysis of a set of factors.
mca(df, nf = 2, abbrev = FALSE)
A data frame containing only factors
The number of dimensions for the MCA. Rarely 3 might be useful.
Should the vertex names be abbreviated? By default these are of the
form ‘factor.level’ but if abbrev = TRUE
they are just
‘level’ which will suffice if the factors have distinct levels.
An object of class "mca"
, with components
The coordinates of the rows, in nf
dimensions.
The coordinates of the column vertices, one for each level of each factor.
Weights for each row, used to interpolate additional factors in predict.mca
.
The number of factors
The singular values for the nf
dimensions.
The matched call.
Venables, W. N. and Ripley, B. D. (2002) Modern Applied Statistics with S. Fourth edition. Springer.
# NOT RUN {
farms.mca <- mca(farms, abbrev=TRUE)
farms.mca
plot(farms.mca)
# }
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