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I would like to fit my data using spline(y~x) but all of the examples that I can find use a spline with smoothing, e.g. lm(y~ns(x), df=_).

I want to use spline() specifically because I am using this to do the analysis represented by the plot that I am making.

Is there a simple way to use spline() in ggplot?

I have considered the hackish approach of fitting a line using

geom_smooth(aes(x=(spline(y~x)$x, y=spline(y~x)$y))

but I would prefer not to have to resort to this.

Thanks!

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up vote 16 down vote accepted

is this what you want?

n <- 10
d <- data.frame(x = 1:n, y = rnorm(n))
ggplot(d,aes(x,y)) + geom_point() + 
  geom_line(data=data.frame(spline(d, n=n*10)))
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that is exactly what I was looking for; nice and simple. thanks –  David Dec 22 '10 at 1:04
1  
what if I want to draw two lines, e.g. for the x1,y1 and x2,y2 in d<-data.frame(x1=1:n, y1=rnorm(n), x2=1:n+0.5, y2=runif(10))? I am having trouble with the line geom_line(aes(x1,y1), data=data.frame(spline(x1,y1))) –  David Dec 22 '10 at 16:37
    
the answer to the above is: geom_line(aes(d$x1,d$y1), data=data.frame(spline(x1,y1))), although I am not sure why... –  David Dec 22 '10 at 16:40
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