cpcp(x,...)
## S3 method for class 'table':
cpcp(
x,ord = NULL, freqvar = NULL,numerics = NULL, gap.type = "equal.tot",
na.rule = "omit", spread=0.3,gap.space = 0.2, sort.individual=FALSE,
jitter = FALSE, plot = TRUE, return.df = !plot,\dots) ## S3 method for class 'default':
cpcp(
x,ord = NULL, freqvar = NULL,numerics = NULL, gap.type = "equal.tot",
na.rule = "omit", spread=0.3,gap.space = 0.2, sort.individual=FALSE,
jitter = FALSE, plot = TRUE, return.df = !plot,\dots)
ord
.If V
is a frequency table (see e.g. ftable) the frequency variablV
.
If V
contains a variable called "Freq"
(see ftable)
it will be defined as frequency variable if freqvar
is un"numeric"
are indicated automatically but integer variables are not."equal.gaps"
will lead to equal gap sizes in the whole plot (and thus depends on the maximum number of categories).
"equal.tot"
will force the gaps within each variable to sum "omit"
will omit all incomplete cases from V
. Otherwise all NA
s will be transformed to categories called "n/a"
.gap.type
is set to "spread"
. Should lie between 0 and 1.TRUE
all polygones with the same categories in two neighboring variables will be drawn together in the right variable.FALSE
only the iset is computed.invisible(TRUE)
or, if return.df == TRUE
, the iset which was computed.require(MASS)
cpcp(x = housing)
A <- arsim(1000,c(4,8,12,16),4, noise = 0.05)
cpcp(A, sort.individual = TRUE)
A2 <- optile(A)
cpcp(A2, sort.individual = TRUE)
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