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# ggplot without facet

The following code, from @ROLO in answer to my earlier question generates 3 plots:

require(mice)
require(reshape2)
require(ggplot2)
dt <- nhanes
impute <- mice(dt, seed = 23109)

# Obtain the imputed data, together with the original data
imp <- complete(impute,"long", include=TRUE)
# Melt into long format
imp <- melt(imp, c(".imp",".id","age"))
# Add a variable for the plot legend
imp\$Imputed<-ifelse(imp\$".imp"==0,"Observed","Imputed")

# Plot. Be sure to use stat_density instead of geom_density in order
#  to prevent what you call "unwanted horizontal and vertical lines"
ggplot(imp, aes(x=value, group=.imp, colour=Imputed)) +
stat_density(geom = "path",position = "identity") +
facet_wrap(~variable, ncol=2, scales="free")

My question is, how do I modify this to plot each one individually ?

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This is just a comment so that @ROLO get's notified, who wrote this code in answer to my earlier question. – Joe King Sep 12 '12 at 20:43
Just do that exact plot three times on each subset of the data? – joran Sep 12 '12 at 20:51
@joran Thanks ! That worked great - I just did imp <- imp[imp\$variable=='bmi',] before the call to ggplot and similar for the others – Joe King Sep 12 '12 at 21:27

As Joran said, you can just use a subset of the data in each plot.

ggplot(imp[imp\$variable=="bmi",], aes(x=value, group=.imp, colour=Imputed)) +
stat_density(geom = "path",position = "identity")
ggplot(imp[imp\$variable=="hyp",], aes(x=value, group=.imp, colour=Imputed)) +
stat_density(geom = "path",position = "identity")
ggplot(imp[imp\$variable=="chl",], aes(x=value, group=.imp, colour=Imputed)) +
stat_density(geom = "path",position = "identity")

Alternatively, you could put these in a loop

library("plyr")
d_ply(imp, .(variable), function(DF) {
print(ggplot(DF, aes(x=value, group=.imp, colour=Imputed)) +
stat_density(geom = "path",position = "identity"))
})

The downside of this approach is that it puts all the plots out one right after the other so there is no chance to see the previous ones on the screen. If you are outputting to a PDF (directly or via something like knitr), all will get written and can be seen that way.

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