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# ggplot2 - plot multiple models on the same plot

I have a list of linear and non-linear models derived from different data sets measuring the same two variables `x` and `y` that I would like to plot on the same plot using `stat_smooth`. This is to be able to easily compare the shape of the relationship between `x` and `y` across datasets.

I'm trying to figure out the most effective way to do this. Right now I am considering creating an empty ggplot object and then using some kind of loop or `lapply` to add sequentially to that object, but this is proving more difficult than I thought. Of course it would be easiest to simply supply the models to `ggplot` but as far as I know, this is not possible. Any thoughts?

Here is a simple example data set to play with using just two models, one linear and one exponential:

``````df1=data.frame(x=rnorm(10),y=rnorm(10))
df2=data.frame(x=rnorm(15),y=rnorm(15))

df.list=list(lm(y~x,df1),nls(y~exp(a+b*x),start=list(a=1,b=1),df2))
``````

And two separate example plots:

``````ggplot(df1,aes(x,y))+stat_smooth(method=lm,se=F)
ggplot(df2,aes(x,y))+stat_smooth(method=nls,formula=y~exp(a+b*x),start=list(a=1,b=1),se=F)
``````
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I think the answer here is to get a common range of X and Y you want to run this over, and go from there. You can pull out a curve from each model using predict, and add on layers to a ggplot using l_ply.

d

``````f1=data.frame(x=rnorm(10),y=rnorm(10))
df2=data.frame(x=rnorm(15),y=rnorm(15))

df.list=list(lm(y~x,df1),nls(y~exp(a+b*x),start=list(a=1,b=1),df2))

a<-ggplot()

#get the range of x you want to look at
x<-seq(min(c(df1\$x, df2\$x)), max(c(df1\$x, df2\$x)), .01)

#use l_ply to keep adding layers
l_ply(df.list, function(amod){

#a data frame for predictors and response
ndf <- data.frame(x=x)

#get the response using predict - you can even get a CI here
ndf\$y <- predict(amod, ndf)

#now add this new layer to the plot
a<<- a+geom_line(ndf, mapping=(aes(x=x, y=y)))

} )

a
``````

OR, if you want to have a nice color key with model number or something:

``````names(df.list) <- 1:length(df.list)
modFits <- ldply(df.list, function(amod){
ndf <- data.frame(x=x)

#get the response using predict - you can even get a CI here
ndf\$y <- predict(amod, ndf)

ndf

})

qplot(x, y, geom="line", colour=.id, data=modFits)
``````
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Jarrett gets the point for providing a way to easily accommodate different kinds of models. I thought of pulling out the fitted values from the model but I like the idea of storing them in a list – jslefche Nov 8 '12 at 22:40

EDIT: Note that the OP changed the question after this answer was posted

Combine the data into a single data frame, with a new column indicating the model, then use `ggplot` to distinguish between the models:

``````df1=data.frame(x=rnorm(10),y=rnorm(10))
df2=data.frame(x=rnorm(10),y=rnorm(10))

df1\$model <- "A"
df2\$model <- "B"

dfc <- rbind(df1, df2)

library(ggplot2)
ggplot(dfc, aes(x, y, group=model)) + geom_point() + stat_smooth(aes(col=model))
``````

This produces:

-
Ah, it appears I made my simple example too simple. I've since changed it to include x and y of differing lengths between datasets, and two different kinds of models (a linear and an exponential). I'm not sure you solution--which is technically correct for the sample I provided, which is my bad--will work for this. Any thoughts? – jslefche Nov 8 '12 at 17:45
Sounds like you should accept this answer for solving the question you asked. You can see if it works on your case. If it doesn't, create a reproducible example and ask a more specific question. – Gregor Nov 8 '12 at 17:50
But you also might be surprised, I think differing numbers of rows shouldn't be a problem. – Gregor Nov 8 '12 at 17:56