Is there anyone can help me implement a ROC curve for a bayesian logistic regression? been trying DPpackage but is it me or it just doesn't work.

the two models i want to compare using ROC Curve are showed below:

```
bayes_mod=MCMClogit(Default ~ ACTIVITY + CIF + MAN + STA + PIA + COL + CurrLiq + DebtCov + GDPgr, data=mydata, burnin=500000,mcmc=10000, tune=0.6,b0=coef(mylogit.reduced),B0=information2, subset=c(-1772,-2064,-655))
bayes_mod1=MCMClogit(Default ~ ACTIVITY + CIF + MAN + STA + PIA + COL + CurrLiq + DebtCov + GDPgr, data=mydata, burnin=500000,mcmc=10000,tune=0.6,subset=c(-1772,-2064,-655))
```

where `Default ~ ACTIVITY + CIF + MAN + STA + PIA + COL + CurrLiq + DebtCov + GDPgr`

are my arguments; mydata is the database; mylogit.reduced is a logistic regression estimated prior to bayesian, `B0`

is the covariation matrix, and `subset=c`

are the eliminated observations.