# Number of clusters
nc <- length(unique(data05$class))
plot_hclust_comparison(data05, nc, mode = "sca")
# Create a subset
set.seed(1) # changes a lot depending on the seed
data05b <- caret::createDataPartition(
data05$class,
p = .3,
list = F
)
data05b <- data05[data05b,]
data05_training <- data05b[,1:2]
# Check the new visualization
pcsca <- plot_hclust_comparison(data05b, nc, mode = "sca")
pcsca
data05_single <- hclust(dist(data05_training), method = "single")
data05_complete <- hclust(dist(data05_training), method = "complete")
data05_average <- hclust(dist(data05_training), method = "average")
data05_ward <- hclust(dist(data05_training), method = "ward.D")
data05_ward2 <- hclust(dist(data05_training), method = "ward.D2")
data05_mcquitty <- hclust(dist(data05_training), method = "mcquitty")
data05_median <- hclust(dist(data05_training), method = "median")
data05_centroid <- hclust(dist(data05_training), method = "centroid")
######## PLURALITY #############################################################
data05_sc_plurality <- mc_hclust(data05_training,
linkage_methods = c("single", "complete"),
aggregation_method = "plurality",
verbose = F)
data05_sca_plurality <- mc_hclust(data05_training,
linkage_methods = c("single", "complete", "average"),
aggregation_method = "plurality",
verbose = F)
# plot_mchclust_tiles(data05_sc_plurality, 10) + ggtitle("SC")+ plot_mchclust_tiles(data05_sca_plurality, 10) + ggtitle("SCA")
######## TAPPROVAL #############################################################
data05_sc_tapproval <- mc_hclust(data05_training,
linkage_methods = c("single", "complete"),
aggregation_method = nc,
verbose = F)
data05_sca_tapproval <- mc_hclust(data05_training,
linkage_methods = c("single", "complete", "average"),
aggregation_method = nc,
verbose = F)
# plot_mchclust_tiles(data05_sc_tapproval, 10) + ggtitle("SC")+ plot_mchclust_tiles(data05_sca_tapproval, 10) + ggtitle("SCA")
######## BORDA #################################################################
data05_sc_borda <- mc_hclust(data05_training,
linkage_methods = c("single", "complete"),
aggregation_method = "borda",
verbose = F)
data05_sca_borda <- mc_hclust(data05_training,
linkage_methods = c("single", "complete", "average"),
aggregation_method = "borda",
verbose = F)
plot_mchclust_tiles(data05_sc_borda, 10) + ggtitle("SC")+ plot_mchclust_tiles(data05_sca_borda, 10) + ggtitle("SCA")
################################################################################
# Save results
save(data05_single,
data05_complete,
data05_average,
data05_ward,
data05_ward2,
data05_mcquitty,
data05_median,
data05_centroid,
# aggregation methods
data05_sc_plurality,
data05_sca_plurality,
data05_sc_tapproval,
data05_sca_tapproval,
data05_sc_borda,
data05_sca_borda,
file = "experiments/IPMU2022/results/results_data05.RData")
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