Paper No. 06-13
JE Griffin
On the Bayesian analysis of species sampling mixture models for density estimation
Abstract: The mixture of normals model has been extensively applied to density estimation problems. This paper proposes an alternative parameterisation that naturally leads to new forms of prior distribution. The parameters can be interpreted as the location, scale and smoothness and default choices lead to automatic Bayesian density estimation. The ideas are extended to of the density. Priors on these parameters are often easier to specify. Alternatively, improper
multivariate density estimation.