The Dependent Dirichlet Process and Related Models

07/12/2020
by   Fernand A. Quintana, et al.
0

Standard regression approaches assume that some finite number of the response distribution characteristics, such as location and scale, change as a (parametric or nonparametric) function of predictors. However, it is not always appropriate to assume a location/scale representation, where the error distribution has unchanging shape over the predictor space. In fact, it often happens in applied research that the distribution of responses under study changes with predictors in ways that cannot be reasonably represented by a finite dimensional functional form. This can seriously affect the answers to the scientific questions of interest, and therefore more general approaches are indeed needed. This gives rise to the study of fully nonparametric regression models. We review some of the main Bayesian approaches that have been employed to define probability models where the complete response distribution may vary flexibly with predictors. We focus on developments based on modifications of the Dirichlet process, historically termed dependent Dirichlet processes, and some of the extensions that have been proposed to tackle this general problem using nonparametric approaches.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/11/2022

On Dependent Dirichlet Processes for General Polish Spaces

We study Dirichlet process-based models for sets of predictor-dependent ...
research
12/17/2014

The supervised hierarchical Dirichlet process

We propose the supervised hierarchical Dirichlet process (sHDP), a nonpa...
research
11/20/2012

A survey of non-exchangeable priors for Bayesian nonparametric models

Dependent nonparametric processes extend distributions over measures, su...
research
07/02/2017

Location Dependent Dirichlet Processes

Dirichlet processes (DP) are widely applied in Bayesian nonparametric mo...
research
09/30/2019

Monotonic Nonparametric Dose Response Model

Toxicologists are often concerned with determining the dosage to which a...
research
08/20/2018

Bayesian Regression for a Dirichlet Distributed Response using Stan

For an observed response that is composed by a set - or vector - of posi...
research
10/15/2012

The Kernel Pitman-Yor Process

In this work, we propose the kernel Pitman-Yor process (KPYP) for nonpar...

Please sign up or login with your details

Forgot password? Click here to reset