priorsia
Priorsia is a term used in discussions of probabilistic reasoning to describe a structured approach to encoding prior knowledge before observing data. In priorsia, prior information is broken into modular components such as priors, hyperpriors, and constraint rules, which can be combined and weighted to reflect different sources of domain expertise. This contrasts with traditional Bayesian practice where a single prior distribution is specified and then updated by likelihood through Bayes' rule.
The concept emphasizes transparency and auditability, enabling researchers to document the origins of assumptions, compare alternative
Applications span statistical modeling, machine learning, risk assessment, and decision support. In practice, priorsia can support
Critics note that priorsia introduces subjectivity and potential elicitation bias, and that maintaining coherent, scalable priors