growdotMiss(x, coords, map, pos = 1, delimiter = NULL, selection = c("any", "all"), log = FALSE, col = c("skyblue", "red", "skyblue4", "red4", "orange", "orange4"), border = par("bg"), alpha = NULL, scale = NULL, size = NULL, exp = c(0, 0.95, 0.05), col.map = grey(0.5), legend = TRUE, legtitle = "Legend", cex.legtitle = par("cex"), cex.legtext = par("cex"), ncircles = 6, ndigits = 1, interactive = TRUE, ...)
data.frame
.data.frame
with two columns giving the
spatial coordinates of the observations.bgmap
.x
needs to have
colnames
). If given, it is used to determine the corresponding
imputation-index for any imputed variable (a logical-vector indicating which
values of the variable have been imputed). If such imputation-indices are
found, they are used for highlighting and the colors are adjusted according
to the given colors for imputed variables (see col
)."any"
(highlighting of missing/imputed values in any of the additional
variables) and "all"
(highlighting of missing/imputed values in
all of the additional variables).pos
should be log-transformed.NA
to omit borders.NULL
. This can be used to prevent
overplotting.format
).growdotMiss
, further arguments and graphical
parameters to be passed to bgmap
. For bubbleMiss
, the
arguments to be passed to growdotMiss
.exp
defining the shape of the exponential function. Missings/imputed missings
in the variable of interest will be drawn as rectangles.If interactive=TRUE
, detailed information for an observation can be
printed on the console by clicking on the corresponding point. Clicking in
a region that does not contain any points quits the interactive session.
bgmap
, mapMiss
,
colormapMiss
data(chorizonDL, package = "VIM")
data(kola.background, package = "VIM")
coo <- chorizonDL[, c("XCOO", "YCOO")]
## for missing values
x <- chorizonDL[, c("Ca","As", "Bi")]
growdotMiss(x, coo, kola.background, border = "white")
## for imputed values
x_imp <- kNN(chorizonDL[,c("Ca","As","Bi" )])
growdotMiss(x_imp, coo, kola.background, delimiter = "_imp", border = "white")
Run the code above in your browser using DataLab