## VT::11.10.2023 - this will render the output independent ## from the version of the package suppressPackageStartupMessages(library(tclust)) require(tclust) require(MASS) #--- EXAMPLE 1 ------------------------------------------ set.seed(123) sig <- diag (2) cen <- rep (1,2) x <- rbind(MASS::mvrnorm(360, cen * 0, sig), MASS::mvrnorm(540, cen * 5, sig * 6 - 2), MASS::mvrnorm(100, cen * 2.5, sig * 50) ) # Two groups and 10% trimming level (clus <- tclust(x, k = 2, alpha = 0.1, restr.fact = 8)) # Three groups (one of them very scattered) and 0% trimming level (clus <- tclust(x, k = 3, alpha=0.0, restr.fact = 100)) #--- EXAMPLE 2 ------------------------------------------ data(geyser2) set.seed(123) (clus <- tclust(geyser2, k=3, alpha=0.03)) plot(clus) #--- EXAMPLE 3 ------------------------------------------ data (M5data) set.seed(123) x <- M5data[, 1:2] (clus.a <- tclust(x, k=3, alpha=0.1, restr.fact=1, restr = "eigen", equal.weights=TRUE)) (clus.b <- tclust(x, k=3, alpha=0.1, restr.fact=50, restr="eigen", equal.weights=TRUE)) (clus.c <- tclust(x, k=3, alpha=0.1, restr.fact=1, restr="deter", equal.weights=TRUE)) (clus.d <- tclust(x, k=3, alpha=0.1, restr.fact=50, restr="eigen", equal.weights=FALSE)) #--- EXAMPLE 4 ------------------------------------------ data (swissbank) set.seed(123) # Two clusters and 8% trimming level (clus <- tclust(swissbank, k = 2, alpha = 0.08, restr.fact = 50)) # Three clusters and 0% trimming level (clus <- tclust(swissbank, k = 3, alpha = 0.0, restr.fact = 110)) ##### Discriminant Factor Analysis for tclust Objects #################### sig <- diag (2) cen <- rep (1, 2) x <- rbind(MASS::mvrnorm(360, cen * 0, sig), MASS::mvrnorm(540, cen * 5, sig * 6 - 2), MASS::mvrnorm(100, cen * 2.5, sig * 50) ) (clus.1 <- tclust(x, k = 2, alpha = 0.1, restr.fact = 12)) (clus.2 <- tclust(x, k = 3, alpha = 0.1, restr.fact = 1)) ## restr.fact and k are chosen improperly for pointing out the ## difference in the plot of DiscrFact (dsc.1 <- DiscrFact(clus.1)) (dsc.2 <- DiscrFact(clus.2)) ########## Classification Trimmed Likelihood Curves ################### ## Do not run - it takes too long and can show differences on some ## architectures due to the random numbers. ## #--- EXAMPLE 1 ------------------------------------------ sig <- diag (2) cen <- rep (1, 2) x <- rbind(MASS::mvrnorm(108, cen * 0, sig), MASS::mvrnorm(162, cen * 5, sig * 6 - 2), MASS::mvrnorm(30, cen * 2.5, sig * 50) ) (ctl <- ctlcurves(x, k = 1:4)) #--- EXAMPLE 2 ------------------------------------------ data (geyser2) (ctl <- ctlcurves(geyser2, k = 1:5))