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

- A QQ plot of the residuals
- A histogram of the residuals
- A plot of residuals vs the linear predictor
- 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

```
gam.check
```

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")
```