Literature DB >> 26097293

Piecewise Approximate Bayesian Computation: fast inference for discretely observed Markov models using a factorised posterior distribution.

S R White1, T Kypraios2, S P Preston2.   

Abstract

Many modern statistical applications involve inference for complicated stochastic models for which the likelihood function is difficult or even impossible to calculate, and hence conventional likelihood-based inferential techniques cannot be used. In such settings, Bayesian inference can be performed using Approximate Bayesian Computation (ABC). However, in spite of many recent developments to ABC methodology, in many applications the computational cost of ABC necessitates the choice of summary statistics and tolerances that can potentially severely bias the estimate of the posterior. We propose a new "piecewise" ABC approach suitable for discretely observed Markov models that involves writing the posterior density of the parameters as a product of factors, each a function of only a subset of the data, and then using ABC within each factor. The approach has the advantage of side-stepping the need to choose a summary statistic and it enables a stringent tolerance to be set, making the posterior "less approximate". We investigate two methods for estimating the posterior density based on ABC samples for each of the factors: the first is to use a Gaussian approximation for each factor, and the second is to use a kernel density estimate. Both methods have their merits. The Gaussian approximation is simple, fast, and probably adequate for many applications. On the other hand, using instead a kernel density estimate has the benefit of consistently estimating the true piecewise ABC posterior as the number of ABC samples tends to infinity. We illustrate the piecewise ABC approach with four examples; in each case, the approach offers fast and accurate inference.

Entities:  

Keywords:  Approximate Bayesian Computation; Simulation; Stochastic Lotka–Volterra

Year:  2013        PMID: 26097293      PMCID: PMC4470364          DOI: 10.1007/s11222-013-9432-2

Source DB:  PubMed          Journal:  Stat Comput        ISSN: 0960-3174            Impact factor:   2.559


  8 in total

1.  Population growth of human Y chromosomes: a study of Y chromosome microsatellites.

Authors:  J K Pritchard; M T Seielstad; A Perez-Lezaun; M W Feldman
Journal:  Mol Biol Evol       Date:  1999-12       Impact factor: 16.240

2.  Markov chain Monte Carlo without likelihoods.

Authors:  Paul Marjoram; John Molitor; Vincent Plagnol; Simon Tavare
Journal:  Proc Natl Acad Sci U S A       Date:  2003-12-08       Impact factor: 11.205

3.  Approximate Bayesian computation in population genetics.

Authors:  Mark A Beaumont; Wenyang Zhang; David J Balding
Journal:  Genetics       Date:  2002-12       Impact factor: 4.562

4.  A statistical model for hospital admissions caused by seasonal diseases.

Authors:  David Moriña; Pedro Puig; José Ríos; Anna Vilella; Antoni Trilla
Journal:  Stat Med       Date:  2011-08-17       Impact factor: 2.373

5.  Bayesian parameter inference for stochastic biochemical network models using particle Markov chain Monte Carlo.

Authors:  Andrew Golightly; Darren J Wilkinson
Journal:  Interface Focus       Date:  2011-09-29       Impact factor: 3.906

6.  Approximate Bayesian computation (ABC) gives exact results under the assumption of model error.

Authors:  Richard David Wilkinson
Journal:  Stat Appl Genet Mol Biol       Date:  2013-05-06

7.  Spatio-temporal epidemiology of Campylobacter jejuni enteritis, in an area of Northwest England, 2000-2002.

Authors:  E Gabriel; D J Wilson; A J H Leatherbarrow; J Cheesbrough; S Gee; E Bolton; A Fox; P Fearnhead; C A Hart; P J Diggle
Journal:  Epidemiol Infect       Date:  2010-03-05       Impact factor: 2.451

8.  Approximate Bayesian computation scheme for parameter inference and model selection in dynamical systems.

Authors:  Tina Toni; David Welch; Natalja Strelkowa; Andreas Ipsen; Michael P H Stumpf
Journal:  J R Soc Interface       Date:  2009-02-06       Impact factor: 4.118

  8 in total
  2 in total

1.  Consensus Monte Carlo for Random Subsets using Shared Anchors.

Authors:  Yang Ni; Yuan Ji; Peter Müller
Journal:  J Comput Graph Stat       Date:  2020-04-15       Impact factor: 2.302

2.  Scalable Bayesian Nonparametric Clustering and Classification.

Authors:  Yang Ni; Peter Müller; Maurice Diesendruck; Sinead Williamson; Yitan Zhu; Yuan Ji
Journal:  J Comput Graph Stat       Date:  2019-07-19       Impact factor: 2.302

  2 in total

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