I'm new to both `stan`

and `brms`

, and having trouble extracting posterior predictive distributions. Let's say I have a simple logistic regression

```
fit = brm(y ~ x, family="bernoulli", data=df.training)
```

where `y`

is binary and `x`

continuous. For test data (or even the training data), I thought I could now get hold of the predictive distribution for the bernoulli probability `p`

, by altering `probs`

in

```
predict(fit, df.test, probs=seq(0, 1, 0.1))
```

However, while the output from this command gives me estimates that are continuous in the range `[0,1]`

(this makes sense), the confidence interval values seem to be binary (this does not make sense to me)... How do I get the entire posterior predictive distribution for `p`

?

`posterior_predict`

function. – Ben Goodrich Oct 30 '17 at 18:39`posterior_linpred(transform=TRUE)`

actually did what I want... I guess this is only an issue for models where the observables are on a different scale than the actual response variable. – funklute Oct 30 '17 at 19:47`pp_check`

function that makes some pretty plots. – jflournoy Dec 31 '17 at 1:22