CATATIS method adapted to JAR data.
catatis_jar(Data, nprod, nsub, levelsJAR=3, beta=0.1, Graph=TRUE, Graph_weights=TRUE,
Test_weights=FALSE, nperm=100)
a list with:
S: the S matrix: a matrix with the similarity coefficient among the subjects
compromise: a matrix which is the compromise of the subjects (akin to a weighted average)
weights: the weights associated with the subjects to build the compromise
weights_tests: the weights tests results
lambda: the first eigenvalue of the S matrix
overall error: the error for the CATATIS criterion
error_by_sub: the error by subject (CATATIS criterion)
error_by_prod: the error by product (CATATIS criterion)
s_with_compromise: the similarity coefficient of each subject with the compromise
homogeneity: homogeneity of the subjects (in percentage)
CA: the results of correspondance analysis performed on the compromise dataset
eigenvalues: the eigenvalues associated to the correspondance analysis
inertia: the percentage of total variance explained by each axis of the CA
scalefactors: the scaling factors of each subject
nb_1: Can be ignored
param: parameters called
data frame where the first column is the Assessors, the second is the products and all other columns the JAR attributes with numbers (1 to 3 or 1 to 5, see levelsJAR)
integer. Number of products.
integer. Number of subjects.
integer. 3 or 5 levels. If 5, the data will be transformed in 3 levels.
numerical. Parameter for agreement between JAR and other answers. Between 0 and 0.5.
logical. Show the graphical representation? Default: TRUE
logical. Should the barplot of the weights be plotted? Default: TRUE
logical. Should the the weights be tested? Default: FALSE
integer. Number of permutation for the weight tests. Default: 100
Llobell, F., Vigneau, E. & Qannari, E. M. ((September 14, 2022). Multivariate data analysis and clustering of subjects in a Just about right task. Eurosense, Turku, Finland.
catatis
, plot.catatis
, summary.catatis
, cluscata_jar
, preprocess_JAR
, cluscata_kmeans_jar
data(cheese)
res.cat=catatis_jar(Data=cheese, nprod=8, nsub=72, levelsJAR=5)
summary(res.cat)
#plot(res.cat)
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