In one of the studies, I once found the following heuristics to perform the calibration,
Step 1: Running MCMC to get model parameters, with K chains Step 2: Compute weight for these K chains, the weight is based on the likelihood based on the parameters corresponding to each chain Step 3: The posterior prediction is then an ensemble prediction based on these K chains where the weight is computed in step 2.
It is more like an importance sampling approach.
Is this approach quite common in posterior prediction.