pmfa {SensoMineR} | R Documentation |
Procrustean Multiple Factor Analysis (PMFA)
Description
Performs Multiple Factor Analysis combined with Procrustean Analysis.
Usage
pmfa(matrice, matrice.illu = NULL, mean.conf = NULL, dilat = TRUE,
graph.ind = TRUE, graph.mfa = TRUE, lim = c(60,40), coord = c(1,2), cex = 0.8)
Arguments
matrice |
a data frame of dimension (p,2j), where p represents the number of products and j the number of panelists |
matrice.illu |
a data frame with illustrative variables (with the same row.names in common as in |
mean.conf |
coordinates of the average configuration (by default NULL, the average configuration is generated by MFA) |
dilat |
boolean, if TRUE (which is the default value) the Morand's dilatation is used |
graph.ind |
boolean, if TRUE (which is the default value) superimposes each panelist's configuration on the average configuration |
graph.mfa |
boolean, if TRUE (which is the default value) and if |
lim |
size of the tablecothe |
coord |
a length 2 vector specifying the components to plot |
cex |
cf. function |
Details
Performs first Multiple Factor Analysis on the tableclothes, then GPA in order to superimpose as well
as possible panelist's configuration on the average configuration obtained by MFA (in the case where mean.conf
is NULL).
If mean.conf
is not NULL the configuration used is the one input by the user.
Value
Returns the RV coefficient between each individual configuration and the consensus.
If mean.conf
is NULL (and graph.mfa
is TRUE), returns the usual graphs resulting from the MFA function: the graph of the individuals and their partial representations,
the graph of the variables (i.e. the coordinates of the products given by each panelist).
If mean.conf
is not NULL returns the configuration input by the user.
When matrice.illu
is not NULL, returns a graph of illustrative variables.
Returns as many superimposed representations of individual configurations as there are panelists.
Author(s)
Francois Husson, Sebastien Le
References
Morand, E., Pages, J. Procrustes multiple factor analysis to analyze the overall perception of food products. Food Quality and Preference 14, 182-188.
See Also
Examples
## Not run:
data(napping)
nappeplot(napping.don)
dev.new()
pmfa(napping.don, napping.words)
## End(Not run)