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When applying gam.check in the mgcv package, R produces some residual plots and basis dimension output. Is there a way to only produce the plots and not the printed output?

dat <- gamSim(1,n=200)
b   <- gam(y~s(x0)+s(x1)+s(x2)+s(x3), data=dat)
plot(b, pages=1)
gam.check(b, pch=19, cex=.3)
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migrated from stats.stackexchange.com Mar 8 at 22:01

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All three plots that involve residuals? Or all plots and just skip the printed material? The plots are very easy to produce but if you just want one I don't want to show how to get all of them. –  Gavin Simpson Mar 8 at 16:08
@GavinSimpson Sorry, I want all the plots (4) and not the printed material –  hgeop Mar 8 at 16:11
I suspect this will end up being migrated to Stack Overflow as there isn't anything inherently statistical in your question, it's just about the right R incantations to use. –  Gavin Simpson Mar 8 at 17:40
Yes I thought this too, after asking the question –  hgeop Mar 8 at 18:54

1 Answer 1

up vote 5 down vote accepted

There are four plots, from top left, moving down and across we have:

  1. A QQ plot of the residuals
  2. A histogram of the residuals
  3. A plot of residuals vs the linear predictor
  4. A plot of observed vs fitted values.

In the code below, I assume b contains your fitted model, as per your example. First some things we need

type <- "deviance"  ## "pearson" & "response" are other valid choices
resid <- residuals(b, type = type)
linpred <- napredict(b$na.action, b$linear.predictors)
observed.y <- napredict(b$na.action, b$y)

Note the last two lines are applying the NA handling method used when the model was fitted to the information on the linear.predictors and y, the stored copy of the response data.

The above code and that shown below is all given in the first 10 or so lines of the gam.check() source. To view this, just enter


at the R prompt.

Each plot is produced as follows:

QQ plot

This is produced via qq.gam():

qq.gam(b, rep = 0, level = 0.9, type = type, rl.col = 2, 
       rep.col = "gray80")

Histogram of residuals

This is produced using

hist(resid, xlab = "Residuals", main = "Histogram of residuals")

Residuals vs linear predictor

This is produced using

plot(linpred, resid, main = "Resids vs. linear pred.", 
     xlab = "linear predictor", ylab = "residuals")

Observed vs fitted values

This is produced using

plot(fitted(b), observed.y, xlab = "Fitted Values", 
     ylab = "Response", main = "Response vs. Fitted Values")
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