Nothing
## ----setup, include = FALSE---------------------------------------------------
knitr::opts_chunk$set(
collapse = TRUE,
comment = "#>"
)
## ----clustering nonlinear patterns by fixed numbers of clusters, out.width="40%", fig.show="hold", fig.cap="Example 1. Nonlinear curves using kmeans+silhouette and Ball+BIC clustering with a fixed number of clusters."----
require(GridOnClusters)
x = rnorm(500)
y = sin(x)+rnorm(500, sd = 0)
z = cos(x)+rnorm(500, sd = 0)
data = cbind(x, y, z)
ks = 10
res = discretize.jointly(data, k=ks, cluster_method = "Ball+BIC",
grid_method = "Sort+split", min_level = 1)
plot(res)
res = discretize.jointly(data, k=ks, cluster_method = "kmeans+silhouette",
grid_method = "Sort+split", min_level = 1)
plot(res)
## ----clustering nonlinear patterns by varying numbers of clusters, out.width="40%", fig.show="hold", fig.cap="Example 2. Using a range for the number of kmeans+silhouette and Ball+BIC clusters"----
x = rnorm(100)
y = log1p(abs(x))
z = ifelse(x >= -0.5 & x <= 0.5, 0, 1) + rnorm(100, 0, 0.1)
data = cbind(x, y, z)
ks = c(2:5)
res = discretize.jointly(data, k=ks, cluster_method = "Ball+BIC",
grid_method = "Sort+split", min_level = 1)
plot(res)
res = discretize.jointly(data, k=ks, cluster_method = "kmeans+silhouette",
grid_method = "Sort+split", min_level = 1)
plot(res)
## ----Example 3 using PAM for clustering, out.width="40%", fig.show="hold", fig.cap="Example 3. Using the partition around medoids clustering method."----
# using a clustering method other than kmeans+silhouette
x = rnorm(100)
y = log1p(abs(x))
z = sin(x)
data = cbind(x, y, z)
# pre-cluster the data using partition around medoids (PAM)
cluster_label = cluster::pam(x=data, diss = FALSE, metric = "euclidean", k = 4)$clustering
res = discretize.jointly(data, cluster_label = cluster_label,
grid_method = "Sort+split", min_level = 1)
plot(res, main="Original data\nPAM clustering",
main.table="Discretized data\nPAM & Sort+split")
## ----Example 4, out.width="40%", fig.show="hold", fig.cap="Example 4. Random patterns using kmeans+silhouette and Ball+BIC clustering with a range."----
ks = 2:20
n = 40*10
sd = 60*4
x=rnorm(2*n, sd=sd)
y=rnorm(2*n, sd=sd)
x=c(x,rnorm(2*n, sd=sd/3))
y=c(y,rnorm(2*n, sd=sd/3)+200)
data = cbind(x, y)
res = discretize.jointly(data, k=ks, cluster_method = "Ball+BIC",
grid_method = "Sort+split", min_level = 1)
plot(res)
res = discretize.jointly(data, k=ks, cluster_method = "kmeans+silhouette",
grid_method = "Sort+split", min_level = 1)
plot(res)
## ----Example 5 bivariate, out.width="40%", fig.show="hold", fig.cap="Example 5. Multi-cluster random patterns using kmeans+silhouette and Ball+BIC clustering with a range."----
n <- 50*8
ks <- 2:20
X.C1 <- matrix(
c(rnorm(n, 5, sd=2),
rnorm(n, 0, sd=40)),
ncol = 2, byrow = FALSE
)
X.C2 <- matrix(
c(rnorm(n, 70, sd=1),
rnorm(n, 0, sd=1)),
ncol = 2, byrow = FALSE
)
X.C3 <- matrix(
c(rnorm(n, 150, sd=30),
rnorm(n, 0, sd=30)),
ncol = 2, byrow = FALSE
)
data = rbind(X.C1, X.C3)
res = discretize.jointly(data, k=ks, cluster_method = "Ball+BIC",
grid_method = "Sort+split", min_level = 1)
plot(res)
res = discretize.jointly(data, k=ks, cluster_method = "kmeans+silhouette",
grid_method = "Sort+split", min_level = 1)
plot(res)
Any scripts or data that you put into this service are public.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.