# Superimposing a log-normal density in ggplot and stat_function()

I try to superimpose a function via `stat_function()` in `ggplot` but can't figure out my mistake. this example produces a nice looking plot:

``````data <- data.frame(x=rt(10000, df=7))

ggplot(data=data, aes(x=x)) + geom_histogram(aes(y = ..density..)) +
stat_function(fun =dnorm, size=1, color='gray', args=list()) +
opts(title="Histogram of interest rate changes") + theme_bw()
``````

but when i try to superimpose a log-normal density this doesn't work as expected (or should I say as expected this doesn't work ;):

``````data <- data.frame(x=rf(10000, df1=7, df2=120))

ggplot(data=data, aes(x=x)) + geom_histogram(aes(y = ..density..)) +
stat_function(fun =dnorm, size=1, color='gray', args=list(log=TRUE)) +
opts(title="Histogram of interest rate changes") + theme_bw()
``````

so here's my hopefully simple question: what am I doing wrong here? I guess this is a really simple problem I just don't see the answer - sorry.

-
I don't get how a desnsity can be negative. –  Luciano Selzer Sep 17 '12 at 17:58
I think part of your problem is `log=TRUE` –  Luciano Selzer Sep 17 '12 at 18:14
@LucianoSelzer of course you were right - and I thought it would work via the `log=TRUE` argument but as Sven demonstrated there is an easier way ;) –  Seb Sep 17 '12 at 18:27
`log = TRUE` computes the probabilities in logaritm it doesn't change the distribution. I let's you have improved precision. –  Luciano Selzer Sep 17 '12 at 18:29

Use `dlnorm`, the density function of the log-normal distribution:
``````ggplot(data=data, aes(x=x)) + geom_histogram(aes(y = ..density..)) +