Sequential monte carlo methods in random intercept models for longitudinal data

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Longitudinal modelling is common in the field of Biostatistical research. In some studies, it becomes mandatory to update posterior distributions based on new data in order to perform inferential process on-line. In such situations, the use of posterior distribution as the prior distribution in the new application of the Bayes’ theorem is sensible. However, the analytic form of the posterior distribution is not always available and we only have an approximated sample of it, thus making the process “not-so-easy”. Equivalent inferences could be obtained through a Bayesian inferential process based on the set that integrates the old and new data. Nevertheless, this is not always a real alternative, because it may be computationally very costly in terms of both time and resources. This work uses the dynamic characteristics of sequential Monte Carlo methods for “static” setups in the framework of longitudinal modelling scenarios. We used this methodology in real data through a random intercept model.

Original languageEnglish
Title of host publicationBayesian Statistics in Action - BAYSM 2016
EditorsEttore Lanzarone, Raffaele Argiento, Raffaele Argiento, Isadora Antoniano Villalobos, Alessandra Mattei
PublisherSpringer New York LLC
Pages3-9
Number of pages7
ISBN (Print)9783319540832
DOIs
Publication statusPublished - 1 Jan 2017
Externally publishedYes
Event3rd Bayesian Young Statisticians Meeting, BAYSM 2016 - Florence, Italy
Duration: 19 Jun 201621 Jun 2016

Publication series

NameSpringer Proceedings in Mathematics and Statistics
Volume194
ISSN (Print)2194-1009
ISSN (Electronic)2194-1017

Conference

Conference3rd Bayesian Young Statisticians Meeting, BAYSM 2016
Country/TerritoryItaly
CityFlorence
Period19/06/1621/06/16

Keywords

  • Bayesian analysis
  • IBIS algorithm
  • Marginal likelihood
  • Particle filter

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