indirect - Elicitation of Independent Conditional Means Priors for
Generalised Linear Models
Functions are provided to facilitate prior elicitation for
Bayesian generalised linear models using independent
conditional means priors. The package supports the elicitation
of multivariate normal priors for generalised linear models.
The approach can be applied to indirect elicitation for a
generalised linear model that is linear in the parameters. The
package is designed such that the facilitator executes
functions within the R console during the elicitation session
to provide graphical and numerical feedback at each design
point. Various methodologies for eliciting fractiles
(equivalently, percentiles or quantiles) are supported,
including versions of the approach of Hosack et al. (2017)
<doi:10.1016/j.ress.2017.06.011>. For example, experts may be
asked to provide central credible intervals that correspond to
a certain probability. Or experts may be allowed to vary the
probability allocated to the central credible interval for each
design point. Additionally, a median may or may not be
elicited.