I have a data.frame containing a continuous predictor and a dichotomous response variable.

```
> head(df)
position response
1 0 1
2 3 1
3 -4 0
4 -1 0
5 -2 1
6 0 0
```

I can easily compute a logistic regression by means of the `glm()`

-function, no problems up to this point.

Next, **I want to create a plot with ggplot, that contains both the empiric probabilities** for each of the overall 11 predictor values,

**and the fitted regression line**.

I went ahead and computed the probabilities with `cast()`

and saved them in another data.frame

```
> probs
position prob
1 -5 0.0500
2 -4 0.0000
3 -3 0.0000
4 -2 0.2000
5 -1 0.1500
6 0 0.3684
7 1 0.4500
8 2 0.6500
9 3 0.7500
10 4 0.8500
11 5 1.0000
```

I plotted the probabilities:

```
p <- ggplot(probs, aes(x=position, y=prob)) + geom_point()
```

But when I try to add the fitted regression line

```
p <- p + stat_smooth(method="glm", family="binomial", se=F)
```

it returns a warning: `non-integer #successes in a binomial glm!`

.
I know that in order to plot the `stat_smooth`

"correctly", I'd have to call it on the original `df`

data with the dichotomous variable. However if I use the `df`

data in `ggplot()`

, I see no way to plot the probabilities.

**How can I combine the probabilities and the regression line in one plot**, in the way it's meant to be in ggplot2, i.e. without getting any warning or error messages?

`+stat_smooth`

first, and then add the line plot for the probabilities you want with a call to:`+geom_line(aes(x=position, y=prob), data=probs)`

. Untested in the absence of a data example. – BondedDust Jun 9 '13 at 16:19