English

Dependent Bayesian nonparametric modeling of compositional data using random Bernstein polynomials

Methodology 2021-08-31 v1

Abstract

We discuss Bayesian nonparametric procedures for the regression analysis of compositional responses, that is, data supported on a multivariate simplex. The procedures are based on a modified class of multivariate Bernstein polynomials and on the use of dependent stick-breaking processes. A general model and two simplified versions of the general model are discussed. Appealing theoretical properties such as continuity, association structure, support, and consistency of the posterior distribution are established. Additionally, we exploit the use of spike-and-slab priors for choosing the version of the model that best adapts to the complexity of the underlying true data-generating distribution. The performance of the proposed model is illustrated in a simulation study and in an application to solid waste data from Colombia.

Keywords

Cite

@article{arxiv.2108.13403,
  title  = {Dependent Bayesian nonparametric modeling of compositional data using random Bernstein polynomials},
  author = {Claudia Wehrhahn and Andrés F. Barrientos and Alejandro Jara},
  journal= {arXiv preprint arXiv:2108.13403},
  year   = {2021}
}