The belief index: An empirical measure for evaluating outcomes in Bayesian belief network modelling
journal contribution
posted on 2023-04-03, 18:18authored byLorenzo Vilizzi, Amina E Price, Leah Beesley, Ben Gawne, Alison J King, John D Koehn, Shaun Meredith, Daryl L Nielsen, Clayton Sharpe
MDFRC item.
First published online March 2012.
Bayesian belief networks (BBNs) are a widespread tool for modelling the effects of management decisions and activities on a variety of environmental and ecological responses. Parameterisation of BBNs is often achieved by elicitation involving multiple experts, and this may result in different conditional probability distribution tables for the nodes in a BBN. Another common use of BBNs is in the comparison of alternative management scenarios. This paper describes and implements the 'belief index' (BI), an empirical measure for evaluating outcomes in BBN modelling that summarises the probabilities (or beliefs) of any one node in a BBN. A set of four species-specific BBNs for managing watering events for wetland fish is outlined and used to statistically assess between-expert and between-species variability in parameter estimates by means of the BI. Different scenarios for management decisions are also compared using the % improvement measure, a derivative of the BI.