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I would like to create a confidence band for a model fitted with gls like this:

require(ggplot2)
require(nlme)

mp <-data.frame(year=c(1990:2010))

mp$wav <- rnorm(nrow(mp))*cos(2*pi*mp$year)+2*sin(rnorm(nrow(mp)*pi*mp$wav))+5
mp$wow <- rnorm(nrow(mp))*mp$wav+rnorm(nrow(mp))*mp$wav^3

m01 <- gls(wow~poly(wav,3), data=mp, correlation = corARMA(p=1))

mp$fit <- as.numeric(fitted(m01))

p <- ggplot(mp, aes(year, wow))+ geom_point()+ geom_line(aes(year,fit))
p

This only plots the fitted values and the data, and I would like something in the style of

p <- ggplot(mp, aes(year, wow))+ geom_point()+ geom_smooth()
p

but with the bands generated by the gls model.

Thanks!

0

1 Answer 1

92
require(ggplot2)
require(nlme)

set.seed(101)
mp <-data.frame(year=1990:2010)
N <- nrow(mp)

mp <- within(mp,
         {
             wav <- rnorm(N)*cos(2*pi*year)+rnorm(N)*sin(2*pi*year)+5
             wow <- rnorm(N)*wav+rnorm(N)*wav^3
         })

m01 <- gls(wow~poly(wav,3), data=mp, correlation = corARMA(p=1))

Get fitted values (the same as m01$fitted)

fit <- predict(m01)

Normally we could use something like predict(...,se.fit=TRUE) to get the confidence intervals on the prediction, but gls doesn't provide this capability. We use a recipe similar to the one shown at http://glmm.wikidot.com/faq :

V <- vcov(m01)
X <- model.matrix(~poly(wav,3),data=mp)
se.fit <- sqrt(diag(X %*% V %*% t(X)))

Put together a "prediction frame":

predframe <- with(mp,data.frame(year,wav,
                                wow=fit,lwr=fit-1.96*se.fit,upr=fit+1.96*se.fit))

Now plot with geom_ribbon

(p1 <- ggplot(mp, aes(year, wow))+
    geom_point()+
    geom_line(data=predframe)+
    geom_ribbon(data=predframe,aes(ymin=lwr,ymax=upr),alpha=0.3))

year vs wow

It's easier to see that we got the right answer if we plot against wav rather than year:

(p2 <- ggplot(mp, aes(wav, wow))+
    geom_point()+
    geom_line(data=predframe)+
    geom_ribbon(data=predframe,aes(ymin=lwr,ymax=upr),alpha=0.3))

wav vs wow

It would be nice to do the predictions with more resolution, but it's a little tricky to do this with the results of poly() fits -- see ?makepredictcall.

2
  • How might you make the polynomial of the last graph smooth and actually look like a polynomial?
    – Pertinax
    Nov 16, 2017 at 13:03
  • 1
    As I said, that would be tricky. You have to make sure that you construct the model matrix in such a way that it uses the basis from the original model - see ?makepredictcall.
    – Ben Bolker
    Nov 16, 2017 at 13:24

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