# Probability Curve for the Odds Ratios of a Logit Model

I have a question about plotting a probability curve for a logistic regression model that has multiple predictors. I'm posted this here on SO because I'm wondering about ggplot2 specific solutions, and creating useful graphics from a logit model in ggplot2.

So here is an example =

``````library(car)
mtcars
log <- glm(vs ~ mpg + am, data=mtcars, family=binomial)
summary(log)
``````

This provides with the logit coefs (log odds), but I'm wondering how to proceed with predicting for Y=1 for all "levels" of mpg and am in ggplot2. Basically, how do I use ggplot2 to create plots which are useful for interpreting the results of the logit model? I'm particularly wondering about solutions when there are multiple predictors.

EDIT:

I was specifically asking about generating graphs with the predicted values, or odds ratios.

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If you weren't trying to do an additive model (i.e. your response was `mpg*am` rather than `mpg+am`) you could just use `ggplot(mtcars,aes(mpg,vs,colour=factor(am)))+geom_smooth(method="glm",family=bi‌​nomial)` ... but this doesn't work for your case (alas) –  Ben Bolker Jul 7 '12 at 23:55

``````library(car)
mtcars
#Change your model name because log is also a function
logodds <- glm(vs ~ mpg + am, data=mtcars, family=binomial)
summary(logodds)

library(ggplot2)
new.data = with(mtcars, expand.grid(am = unique(am),
mpg = seq(min(mpg), max(mpg))))

new.data\$vs <- predict.glm(logodds, newdata = new.data, type = "response")

ggplot(new.data, aes(mpg, vs, colour = am)) + geom_line(aes(group = am))
``````

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Good call on `type="response"`. I forgot about that. –  Jared Jul 6 '12 at 20:17

Not sure if you're looking to the predicted Y given different values of mpg and am or just looking to interpret the coefficients?

If you're trying to interpret the coefficients I am a big fan of coefficient plots.

``````require(coefplot)
coefplot(log)
``````

That gets you this:

EDIT: Perhaps this then.

``````preds <- with(mtcars, expand.grid(mpg, am))
names(preds) <- c("mpg", "am")
preds\$Score <- predict(object=logMod, newdata=preds, type="response")
ggplot(preds, aes(x=mpg, y=Score, group=am, colour=factor(am))) + geom_line(linetype=2) + scale_color_discrete("am")
``````

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Sorry, my question probably wasn't clear. I was really talking about the predicted values. –  ATMathew Jul 6 '12 at 19:11
@ATMathew This might be more along the lines of what you're looking for. –  Jared Jul 6 '12 at 19:21

Your other choice - though not yet using ggplot2 - are plot methods found in Frank Harrell's rms package. I hope that Harrell will shortly switch to ggplot2 for his graphs, but the set of methods, diagnostic plots, probability plots, coefficient plots, etc. are very useful.

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