# How to add gaussian curve to histogram created with qplot?

I have question probably similar to Fitting a density curve to a histogram in R. Using qplot I have created 7 histograms with this command:

`````` (qplot(V1, data=data, binwidth=10, facets=V2~.)
``````

For each slice, I would like to add a fitting gaussian curve. When I try to use `lines()` method, I get error:

``````Error in plot.xy(xy.coords(x, y), type = type, ...) :
plot.new has not been called yet
``````

What is the command to do it correctly?

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You can't mix base graphics functions (`lines()` etc) with grid graphics as used by the gpplot2 and lattice packages. –  Gavin Simpson Aug 24 '11 at 21:50

Have you tried `stat_function`?

``````+ stat_function(fun = dnorm)
``````

You'll probably want to plot the histograms using `aes(y = ..density..)` in order to plot the density values rather than the counts.

A lot of useful information can be found in this question, including some advice on plotting different normal curves on different facets.

Here are some examples:

``````dat <- data.frame(x = c(rnorm(100),rnorm(100,2,0.5)),
a = rep(letters[1:2],each = 100))
``````

Overlay a single normal density on each facet:

``````ggplot(data = dat,aes(x = x)) +
facet_wrap(~a) +
geom_histogram(aes(y = ..density..)) +
stat_function(fun = dnorm, colour = "red")
``````

From the question I linked to, create a separate data frame with the different normal curves:

``````grid <- with(dat, seq(min(x), max(x), length = 100))
normaldens <- ddply(dat, "a", function(df) {
data.frame(
predicted = grid,
density = dnorm(grid, mean(df\$x), sd(df\$x))
)
})
``````

And plot them separately using `geom_line`:

``````ggplot(data = dat,aes(x = x)) +
facet_wrap(~a) +
geom_histogram(aes(y = ..density..)) +
geom_line(data = normaldens, aes(x = predicted, y = density), colour = "red")
``````

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i am very beginner in R, just have it for few days. I will take a look at it, thanks for the hint! –  mkk Aug 24 '11 at 21:49

`ggplot2` uses a different graphics paradigm than base graphics. (Although you can use `grid` graphics with it, the best way is to add a new `stat_function` layer to the plot. The `ggplot2` code is the following.

Note that I couldn't get this to work using `qplot`, but the transition to `ggplot` is reasonably straighforward, the most important difference is that your data must be in data.frame format.

Also note the explicit mapping of the y aesthetic `aes=aes(y=..density..))` - this is slighly unusual but takes the `stat_function` results and maps it to the data:

``````library(ggplot2)
data <- data.frame(V1 <- rnorm(700), V2=sample(LETTERS[1:7], 700, replace=TRUE))
ggplot(data, aes(x=V1)) +
stat_bin(aes(y=..density..)) +
stat_function(fun=dnorm) +
facet_grid(V2~.)
``````

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