Bayesian experimental design differs from the classical approach in that the purpose of the experiment is explicitly represented in the form of a loss function. Different loss functions imply different ways to optimise the design. Designing to best estimate model parameters leads to Bayes a-optimal designs , whereas designing to maximise the information gained leads to Bayes d-optimal designs .
Last updated: 05-07-2005 15:59:40