Inference for SDE models via Approximate Bayesian Computation

Umberto Picchini

Research output: Contribution to journalArticlepeer-review

Abstract

Models defined by stochastic differential equations (SDEs) allow for the representation of random variability in dynamical systems. The relevance of this class of models is growing in many applied research areas and is already a standard tool to model e.g. financial, neuronal and population growth dynamics. However inference for multidimensional SDE models is still very challenging, both computationally and theoretically. Approximate Bayesian computation (ABC) allow to perform Bayesian inference for models which are sufficiently complex that the likelihood function is either analytically unavailable or computationally prohibitive to evaluate. A computationally efficient ABC-MCMC algorithm is proposed, halving the running time in our simulations. Focus is on the case where the SDE describes latent dynamics in state-space models; however the methodology is not limited to the state-space framework. Simulation studies for a pharmacokinetics/pharmacodynamics model and for stochastic chemical reactions are considered and a Matlab package implementing our ABC-MCMC algorithm is provided.
Original languageEnglish
Pages (from-to)1080-1100
JournalJournal of Computational and Graphical Statistics
Volume23
Issue number4
DOIs
Publication statusPublished - 2014

Bibliographical note

Accepted author version posted online 18 Dec 2013 at Taylor & Francis Online.

Subject classification (UKÄ)

  • Probability Theory and Statistics

Free keywords

  • early–rejection MCMC
  • likelihood-free inference
  • state-space model
  • stochastic differential equation
  • stochastic chemical reaction

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