The fcmTFN function extends the fuzzy c-means algorithm to handle ordinal data through a triangular fuzzy number (TFN) representation.
result <- fcmTFN(
data = sim_likert7,
option = "B",
k_values = 2:6
)
#> Running k = 2
#> Running k = 3
#> Running k = 4
#> Running k = 5
#> Running k = 6
summary(result)
#>
#> Fuzzy C-Means Clustering for TFN
#> ---------------------------------
#>
#> Optimal number of clusters (k): 3
#>
#> Weights:
#> wc = 0.61997
#> ws = 0.38003
#>
#> Iterations: 11
#>
#> Scale configuration:
#> Type : symmetric
#> Option : B
#>
#> Xie-Beni values:
#> k = 2 : 0.067732
#> k = 3 : 0.044298
#> k = 4 : 4.477249e+14
#> k = 5 : 4.077275e+15
#> k = 6 : 3.137093e+15prototype_results(result, format = "table")
#> $Cluster_1
#> l c r
#> Var1 3.007 4.007 5.007
#> Var2 3.061 4.061 5.060
#> Var3 2.970 3.970 4.969
#> Var4 3.008 4.008 5.007
#> Var5 3.062 4.061 5.061
#> Var6 3.006 4.006 5.006
#> Var7 2.972 3.972 4.971
#> Var8 3.028 4.027 5.027
#> Var9 2.993 3.993 4.992
#> Var10 3.006 4.006 5.005
#> Var11 3.005 4.005 5.005
#> Var12 2.971 3.970 4.970
#>
#> $Cluster_2
#> l c r
#> Var1 1.081 2.022 3.022
#> Var2 1.133 2.038 3.038
#> Var3 1.140 2.023 3.023
#> Var4 1.081 1.952 2.952
#> Var5 1.102 1.976 2.976
#> Var6 1.113 1.997 2.997
#> Var7 1.110 2.041 3.041
#> Var8 1.102 1.933 2.933
#> Var9 1.093 2.034 3.034
#> Var10 1.071 1.995 2.995
#> Var11 1.113 2.046 3.045
#> Var12 1.152 2.044 3.044
#>
#> $Cluster_3
#> l c r
#> Var1 4.969 5.969 6.851
#> Var2 5.060 6.060 6.930
#> Var3 5.060 6.060 6.912
#> Var4 5.030 6.030 6.909
#> Var5 4.957 5.957 6.918
#> Var6 4.945 5.945 6.859
#> Var7 5.018 6.018 6.881
#> Var8 5.029 6.029 6.930
#> Var9 4.989 5.989 6.881
#> Var10 4.989 5.989 6.891
#> Var11 4.994 5.994 6.898
#> Var12 4.985 5.985 6.888This vignette demonstrated the basic workflow for fuzzy clustering of ordinal data using the fcmTFN function from the fcmfd package.