| Literature DB >> 26052373 |
Maria Anna Di Lucca1, Alessandra Guglielmi2, Peter Müller3, Fernando A Quintana4.
Abstract
We introduce a model for a time series of continuous outcomes, that can be expressed as fully nonparametric regression or density regression on lagged terms. The model is based on a dependent Dirichlet process prior on a family of random probability measures indexed by the lagged covariates. The approach is also extended to sequences of binary responses. We discuss implementation and applications of the models to a sequence of waiting times between eruptions of the Old Faithful Geyser, and to a dataset consisting of sequences of recurrence indicators for tumors in the bladder of several patients.Entities:
Keywords: binary data; dependent Dirichlet process; hierarchical Bayesian model; latent variables; longitudinal data
Year: 2013 PMID: 26052373 PMCID: PMC4454430 DOI: 10.1214/13-BA803
Source DB: PubMed Journal: Bayesian Anal ISSN: 1931-6690 Impact factor: 3.728