scattMiss | R Documentation |
In addition to a standard scatterplot, lines are plotted for the missing values in one variable. If there are imputed values, they will be highlighted.
scattMiss( x, delimiter = NULL, side = 1, col = c("skyblue", "red", "orange", "lightgrey"), alpha = NULL, lty = c("dashed", "dotted"), lwd = par("lwd"), quantiles = c(0.5, 0.975), inEllipse = FALSE, zeros = FALSE, xlim = NULL, ylim = NULL, main = NULL, sub = NULL, xlab = NULL, ylab = NULL, interactive = TRUE, ... )
x |
a |
delimiter |
a character-vector to distinguish between variables and
imputation-indices for imputed variables (therefore, |
side |
if |
col |
a vector of length four giving the colors to be used in the plot. The first color is used for the scatterplot, the second/third color for the rug representation for missing/imputed values. The second color is also used for the lines for missing values. Imputed values will be highlighted with the third color, and the fourth color is used for the ellipses (see ‘Details’). If only one color is supplied, it is used for the scatterplot, the rug representation and the lines, whereas the default color is used for the ellipses. Else if a vector of length two is supplied, the default color is used for the ellipses as well. |
alpha |
a numeric value between 0 and 1 giving the level of
transparency of the colors, or |
lty |
a vector of length two giving the line types for the lines and ellipses. If a single value is supplied, it will be used for both. |
lwd |
a vector of length two giving the line widths for the lines and ellipses. If a single value is supplied, it will be used for both. |
quantiles |
a vector giving the quantiles of the chi-square
distribution to be used for the tolerance ellipses, or |
inEllipse |
plot lines only inside the largest ellipse. Ignored if
|
zeros |
a logical vector of length two indicating whether the variables
are semi-continuous, i.e., contain a considerable amount of zeros. If
|
xlim, ylim |
axis limits. |
main, sub |
main and sub title. |
xlab, ylab |
axis labels. |
interactive |
a logical indicating whether the |
... |
further graphical parameters to be passed down (see
|
Information about missing values in one variable is included as vertical or
horizontal lines, as determined by the side
argument. The lines are
thereby drawn at the observed x- or y-value. In case of imputed values, they
will additionally be highlighted in the scatterplot. Supplementary,
percentage coverage ellipses can be drawn to give a clue about the shape of
the bivariate data distribution.
If interactive
is TRUE
, clicking in the bottom margin redraws
the plot with information about missing/imputed values in the first variable
and clicking in the left margin redraws the plot with information about
missing/imputed values in the second variable. Clicking anywhere else in
the plot quits the interactive session.
The argument zeros
has been introduced in version 1.4. As a
result, some of the argument positions have changed.
Andreas Alfons, modifications by Bernd Prantner
M. Templ, A. Alfons, P. Filzmoser (2012) Exploring incomplete data using visualization tools. Journal of Advances in Data Analysis and Classification, Online first. DOI: 10.1007/s11634-011-0102-y.
marginplot()
Other plotting functions:
aggr()
,
barMiss()
,
histMiss()
,
marginmatrix()
,
marginplot()
,
matrixplot()
,
mosaicMiss()
,
pairsVIM()
,
parcoordMiss()
,
pbox()
,
scattJitt()
,
scattmatrixMiss()
,
spineMiss()
data(tao, package = "VIM") ## for missing values scattMiss(tao[,c("Air.Temp", "Humidity")]) ## for imputed values scattMiss(kNN(tao[,c("Air.Temp", "Humidity")]), delimiter = "_imp")
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