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clustMixType (version 0.2-5)

summary.kproto: Summary Method for kproto Cluster Result

Description

Investigation of variances to specify lambda for k-prototypes clustering.

Usage

# S3 method for kproto
summary(object, data = NULL, pct.dig = 3, ...)

Arguments

object

Object of class kproto.

data

Optional data set to be analyzed. If !(is.null(data)) clusters for data are assigned by predict(object, data). If not specified the clusters of the original data ara analyzed which is only possible if kproto has been called using keep.data = TRUE.

pct.dig

Number of digits for rounding percentages of factor variables.

Further arguments to be passed to internal call of summary() for numeric variables.

Value

List where each element corresponds to one variable. Each row of any element corresponds to one cluster.

Details

For numeric variables statistics are computed for each clusters using summary(). For categorical variables distribution percentages are computed.

Examples

Run this code
# NOT RUN {
# generate toy data with factors and numerics

n   <- 100
prb <- 0.9
muk <- 1.5 
clusid <- rep(1:4, each = n)

x1 <- sample(c("A","B"), 2*n, replace = TRUE, prob = c(prb, 1-prb))
x1 <- c(x1, sample(c("A","B"), 2*n, replace = TRUE, prob = c(1-prb, prb)))
x1 <- as.factor(x1)

x2 <- sample(c("A","B"), 2*n, replace = TRUE, prob = c(prb, 1-prb))
x2 <- c(x2, sample(c("A","B"), 2*n, replace = TRUE, prob = c(1-prb, prb)))
x2 <- as.factor(x2)

x3 <- c(rnorm(n, mean = -muk), rnorm(n, mean = muk), rnorm(n, mean = -muk), rnorm(n, mean = muk))
x4 <- c(rnorm(n, mean = -muk), rnorm(n, mean = muk), rnorm(n, mean = -muk), rnorm(n, mean = muk))

x <- data.frame(x1,x2,x3,x4)

res <- kproto(x, 4)
summary(res)

# }

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