# Multiple density graphs different groups (based on factor level) using plyr

I am trying to output multiple density plot from a function, by dividing the dataframe into pieces such that separate density for each level of a factor for corresponding yvar.

``````set.seed(1234)
Aa = c(rnorm(40000, 50, 10))
Bb = c(rnorm(4000, 70, 10))
Cc = c(rnorm(400, 75, 10))
Dd = c(rnorm(40, 80, 10))
yvar = c(Aa, Bb, Cc, Dd)
gen <- c(rep("Aa", length(Aa)),rep("Bb", length(Bb)), rep("Cc", length(Cc)),
rep("Dd", length(Dd)))
mydf <- data.frame(gen, yvar)

minyvar <- min(yvar)
maxyvar <- max(yvar)

par(mfrow = c(length(levels(mydf\$gen)),1))

plotdensity <- function (xf, minyvar, maxyvar){
plot(density(xf), xlim=c(minyvar, maxyvar), main = paste (names(xf),
"distribution", sep = ""))
dens <- density(xf)
x1 <- min(which(dens\$x >= quantile(xf, .80)))
x2 <- max(which(dens\$x <  max(dens\$x)))
with(dens, polygon(x=c(x[c(x1,x1:x2,x2)]), y= c(0, y[x1:x2], 0), col="blu4"))
abline(v= mean(xf),  col = "black", lty = 1, lwd =2)
}

require(plyr)
ddply(mydf, .(mydf\$gen), plotdensity, yvar, minyvar, maxyvar)

Error in .fun(piece, ...) : unused argument(s) (111.544494112914)
``````

My specific expectation are each plot is named by name of level for example Aa, Bb, Cc, Dd Arrangement of the graphs see the parameter set, so that we compare density changes and means. compact - Low space between the graphs.

Help appreciated.

Edits: The following graphs are individually produced, although I want to develop a function that can be applicable to x level for a factor.

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I see that @Andrie just beat me to most of this. I'm still going to post my answer, since filling only certain quantiles of the distribution requires a slightly different approach.

``````set.seed(1234)
Aa = c(rnorm(40000, 50, 10))
Bb = c(rnorm(4000, 70, 10))
Cc = c(rnorm(400, 75, 10))
Dd = c(rnorm(40, 80, 10))
yvar = c(Aa, Bb, Cc, Dd)
gen <- c(rep("Aa", length(Aa)),rep("Bb", length(Bb)), rep("Cc", length(Cc)),
rep("Dd", length(Dd)))
mydf <- data.frame(grp = gen,x = c(Aa,Bb,Cc,Dd))

#Calculate the densities and an indicator for the desire quantile
# for later use in subsetting
mydf <- ddply(mydf,.(grp),.fun = function(x){
tmp <- density(x\$x)
x1 <- tmp\$x
y1 <- tmp\$y
q80 <- x1 >= quantile(x\$x,0.8)
data.frame(x=x1,y=y1,q80=q80)
})

#Separate data frame for the means
mydfMean <- ddply(mydf,.(grp),summarise,mn = mean(x))

ggplot(mydf,aes(x = x)) +
facet_wrap(~grp) +
geom_line(aes(y = y)) +
geom_ribbon(data = subset(mydf,q80),aes(ymax = y),ymin = 0, fill = "black") +
geom_vline(data = mydfMean,aes(xintercept = mn),colour = "black")
``````

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great solution, yes I need to show the quantile. I am interested in sorting the facets as I provided in my example, I will modify it to facet_grid(grp ~ .) and I also like theme_bw(). Also I like to display number as Andre's solution to display number –  jon Nov 13 '11 at 17:32
thanks, appreciate your help –  jon Nov 13 '11 at 17:39
+1 for showing how to the quantiles –  Andrie Nov 13 '11 at 21:15

Here is a way of doing it in `ggplot`:

``````set.seed(1234)
mydf <- rbind(
data.frame(gen="Aa", yvar= rnorm(40000, 50, 10)),
data.frame(gen="Bb", yvar=rnorm(4000, 70, 10)),
data.frame(gen="Cc", yvar=rnorm(400, 75, 10)),
data.frame(gen="Dd", yvar=rnorm(40, 80, 10))
)

labels <- ddply(mydf, .(gen), nrow)
means  <- ddply(mydf, .(gen), summarize, mean=mean(yvar))

ggplot(mydf, aes(x=yvar)) +
stat_density(fill="blue") +
facet_grid(gen~.) +
theme_bw() +
geom_vline(data=means, aes(xintercept=mean), colour="red") +
geom_text(data=labels, aes(label=paste("n =", V1)), x=5, y=0,
hjust=0, vjust=0) +
opts(title="Distribution")
``````

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Thanks for help, I appreciate it. I am confused which answer I should accept, I like your solution except I need quantiles (most important) –  jon Nov 13 '11 at 17:38
@John I would just combine the relevant pieces from each answer. And accept either one, it's up to you. –  joran Nov 13 '11 at 18:53
I suggest you accept the answer by @joran –  Andrie Nov 13 '11 at 21:15

With sincere thanks to joran and Andrie, the following is just compilation of my favorite from above two posts, just some of readers might want to see.

``````require(ggplot2)
set.seed(1234)
Aa = c(rnorm(40000, 50, 10))
Bb = c(rnorm(4000, 70, 10))
Cc = c(rnorm(400, 75, 10))
Dd = c(rnorm(40, 80, 10))
yvar = c(Aa, Bb, Cc, Dd)
gen <- c(rep("Aa", length(Aa)),rep("Bb", length(Bb)), rep("Cc", length(Cc)),
rep("Dd", length(Dd)))
mydf <- data.frame(grp = gen,x = c(Aa,Bb,Cc,Dd))
mydf1 <- mydf
#Calculate the densities and an indicator for the desire quantile
# for later use in subsetting
mydf <- ddply(mydf,.(grp),.fun = function(x){
tmp <- density(x\$x)
x1 <- tmp\$x
y1 <- tmp\$y
q80 <- x1 >= quantile(x\$x,0.8)
data.frame(x=x1,y=y1,q80=q80)
})
#Separate data frame for the means
mydfMean <- ddply(mydf,.(grp),summarise,mn = mean(x))
labels <- ddply(mydf1, .(grp), nrow)
ggplot(mydf,aes(x = x)) +
facet_grid(grp~.)  +
geom_line(aes(y = y)) +
geom_ribbon(data = subset(mydf,q80),aes(ymax = y),ymin = 0,
fill = "black")            +
geom_vline(data = mydfMean,aes(xintercept = mn),
colour = "black") +         geom_text(data=labels,
aes(label=paste("n =", labels\$V1)), x=5, y=0,
hjust=0, vjust=0) +
opts(title="Distribution") +  theme_bw()
``````

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