posteriorrelating
Posteriorrelating is a term used in some statistical and machine learning writings to describe techniques that focus on relating, comparing, or transferring information between Bayesian posterior distributions. It is not a widely standardized term, but appears in discussions of cross-dataset inference, multi-task learning, and hierarchical Bayesian modeling where posteriors from one analysis inform another.
Core ideas include measuring similarity between posteriors, mapping one posterior to another through linking functions or
Applications span meta-analysis with Bayesian posteriors, cross-domain transfer learning, multi-study epidemiology, and adaptive experimental design where
Relation to related concepts is evident, as posteriorrelating overlaps with Bayesian updating, hierarchical modeling, and transfer
Challenges include sensitivity to prior choices and model misspecification, potential non-identifiability between posteriors, and computational demands