Auxiliary Variables for Multi-Dirichlet Priors

08/17/2017
by   Christoph Carl Kling, et al.
0

Bayesian models that mix multiple Dirichlet prior parameters, called Multi-Dirichlet priors (MD) in this paper, are gaining popularity. Inferring mixing weights and parameters of mixed prior distributions seems tricky, as sums over Dirichlet parameters complicate the joint distribution of model parameters. This paper shows a novel auxiliary variable scheme which helps to simplify the inference for models involving hierarchical MDs and MDPs. Using this scheme, it is easy to derive fully collapsed inference schemes which allow for an efficient inference.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/13/2018

A conjugate prior for the Dirichlet distribution

This note investigates a conjugate class for the Dirichlet distribution ...
research
01/15/2023

Discrete parametric graphical models with a Dirichlet type priors

We introduce two discrete parametric graphical models on a finite decomp...
research
05/20/2021

makemyprior: Intuitive Construction of Joint Priors for Variance Parameters in R

Priors allow us to robustify inference and to incorporate expert knowled...
research
07/07/2017

Bayesian Models of Data Streams with Hierarchical Power Priors

Making inferences from data streams is a pervasive problem in many moder...
research
02/05/2020

Semiparametric Bayesian Forecasting of Spatial Earthquake Occurrences

Self-exciting Hawkes processes are used to model events which cluster in...
research
05/27/2019

Dirichlet Simplex Nest and Geometric Inference

We propose Dirichlet Simplex Nest, a class of probabilistic models suita...
research
08/06/2020

Bayesian Indirect Inference for Models with Intractable Normalizing Functions

Inference for doubly intractable distributions is challenging because th...

Please sign up or login with your details

Forgot password? Click here to reset