I'm trying to use GaussianProcessRegressor in sklearn to predict values of unknown.

The target values are typically between 1000-10000.

Since they are not 0-mean prior, I set the model with `normalize_y = False`

, which is a default setup.

```
from sklearn.gaussian_process import GaussianProcessRegressor
gpr = GaussianProcessRegressor(kernel = RBF, random_state=0, alpha=1e-10, normalize_y = False)
```

when I predicted unknown with the gpr model, the returned std values are unrealistically too small, like in the scale of 0.1, which is 0.001% of the predicted values.

When I changed the setting to `normalize_y = True`

, the returned std values are more realistic, about 500ish.

Can someone explain exactly what `normalize_y`

does here, and if I set it to True or False in this case?