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

05/20/2021
by   Ingeborg Gullikstad Hem, et al.
0

Priors allow us to robustify inference and to incorporate expert knowledge in Bayesian hierarchical models. This is particularly important when there are random effects that are hard to identify based on observed data. The challenge lies in understanding and controlling the joint influence of the priors for the variance parameters, and makemyprior is an R package that guides the formulation of joint prior distributions for variance parameters. A joint prior distribution is constructed based on a hierarchical decomposition of the total variance in the model along a tree, and takes the entire model structure into account. Users input their prior beliefs or express ignorance at each level of the tree. Prior beliefs can be general ideas about reasonable ranges of variance values and need not be detailed expert knowledge. The constructed priors lead to robust inference and guarantee proper posteriors. A graphical user interface facilitates construction and assessment of different choices of priors through visualization of the tree and joint prior. The package aims to expand the toolbox of applied researchers and make priors an active component in their Bayesian workflow.

READ FULL TEXT

page 15

page 16

page 17

research
02/01/2019

Intuitive principle-based priors for attributing variance in additive model structures

Variance parameters in additive models are often assigned independent pr...
research
08/30/2022

Catalytic Priors: Using Synthetic Data to Specify Prior Distributions in Bayesian Analysis

Catalytic prior distributions provide general, easy-to-use and interpret...
research
02/23/2020

Flexible Prior Elicitation via the Prior Predictive Distribution

The prior distribution for the unknown model parameters plays a crucial ...
research
08/17/2017

Auxiliary Variables for Multi-Dirichlet Priors

Bayesian models that mix multiple Dirichlet prior parameters, called Mul...
research
09/18/2018

Comparison between Suitable Priors for Additive Bayesian Networks

Additive Bayesian networks are types of graphical models that extend the...
research
06/14/2023

Probabilistic Regular Tree Priors for Scientific Symbolic Reasoning

Symbolic Regression (SR) allows for the discovery of scientific equation...
research
10/06/2020

Robust priors for regularized regression

Induction benefits from useful priors. Penalized regression approaches, ...

Please sign up or login with your details

Forgot password? Click here to reset