Dynamic Quantile Linear Models: A Bayesian Approach

Kelly CM Gonçalves; Hélio S Migon; Leonardo S Bastos ORCID logo; (2018) Dynamic Quantile Linear Models: A Bayesian Approach. arXiv, 15 (2). pp. 335-362. DOI: 10.1214/19-ba1156
Copy

The paper introduces a new class of models, named dynamic quantile linear models, which combines dynamic linear models with distribution-free quantile regression producing a robust statistical method. Bayesian estimation for the dynamic quantile linear model is performed using an efficient Markov chain Monte Carlo algorithm. The paper also proposes a fast sequential procedure suited for high-dimensional predictive modeling with massive data, where the generating process is changing over time. The proposed model is evaluated using synthetic and well-known time series data. The model is also applied to predict annual incidence of tuberculosis in the state of Rio de Janeiro and compared with global targets set by the World Health Organization.


picture_as_pdf
1711.00162v2.pdf
subject
Accepted Version
Available under Creative Commons: NC-ND 3.0

View Download

Atom BibTeX OpenURL ContextObject in Span Multiline CSV OpenURL ContextObject Dublin Core Dublin Core MPEG-21 DIDL EndNote HTML Citation JSON MARC (ASCII) MARC (ISO 2709) METS MODS RDF+N3 RDF+N-Triples RDF+XML RIOXX2 XML Reference Manager Refer Simple Metadata ASCII Citation EP3 XML
Export

Downloads