I am looking at the R function `gausspr`

from the `kernlab`

package for Gaussian process regression. The process is defined by the hyperparameters of the kernel function and by the noise in the data. I see in the documentation that I can specify

var: the initial noise variance, (only for regression) (default : 0.001)

but I do not see how to access the *estimated* value after the regression has run. For instance, consider I have some observed points, and want to predict y values at the locations given by `X`

:

```
obs <- data.frame(x = c(-4, -3, -1, 0, 2),
y = c(-2, 0, 1, 2, -1))
X <- seq(-5,5,len=50)
```

I can do so with `kernlab::gausspr`

as such:

```
gp <- gausspr(obs$x, obs$y, kernel="rbfdot", scaled=FALSE, var=.09)
Ef <- predict(gp, X)
```

I can get the estimated value of the kernel hyperparameter:

```
gp@kernelf@kpar
```

But I don't see how I can return the estimated value of the noise parameter, `var`

?