I am running a Bayesian logit with `MCMCpack::MCMClogit`

. The syntax is easy and follows `lm()`

or `glm()`

, but I can't find any equivalent of the `predict.glm`

function. Is there any way of predicting the probabilities of the outcomes in `MCMClogit`

for each unit of observation in the dataframe? `predict()`

is especially useful for validating training data from new data, which is what I ultimately have to do.

```
df = read.csv("http://dl.dropbox.com/u/1791181/MCMC.csv")#Read in data
model.glm = glm(SECONDARY.LEVEL ~ AGE + SEX, data=df, family=binomial(link=logit))
glm.predict = predict(model.glm, type="response")
```

For MCMClogit():

```
model.mcmc = MCMClogit(SECONDARY.LEVEL ~ AGE + SEX, data=df, mcmc=1000)
```