reparameterising
Reparameterising, or parameterising, is the practice of rewriting a model or probability distribution in terms of alternative parameters or latent variables. The aim is to modify the representation to improve properties such as identifiability, numerical stability, or computational efficiency in estimation and inference.
In Bayesian inference, reparameterisation often reduces correlations between parameters or between parameters and data, which can
In optimization and machine learning, reparameterisation helps enforce constraints and improve conditioning. For positive quantities, parameters
From a mathematical perspective, changing parameterisations requires transforming probability densities via the Jacobian determinant of the
Limitations include potential loss of interpretability, the need to account for the Jacobian, and the possibility