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      A Bayesian Sequential Learning Framework to Parameterise Continuum Models of Melanoma Invasion into Human Skin

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      Bulletin of Mathematical Biology
      Springer Nature

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

          Approximate Bayesian computation (ABC) methods can be used to evaluate posterior distributions without having to calculate likelihoods. In this paper, we discuss and apply an ABC method based on sequential Monte Carlo (SMC) to estimate parameters of dynamical models. We show that ABC SMC provides information about the inferability of parameters and model sensitivity to changes in parameters, and tends to perform better than other ABC approaches. The algorithm is applied to several well-known biological systems, for which parameters and their credible intervals are inferred. Moreover, we develop ABC SMC as a tool for model selection; given a range of different mathematical descriptions, ABC SMC is able to choose the best model using the standard Bayesian model selection apparatus.
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            Sequential Monte Carlo without likelihoods.

            Recent new methods in Bayesian simulation have provided ways of evaluating posterior distributions in the presence of analytically or computationally intractable likelihood functions. Despite representing a substantial methodological advance, existing methods based on rejection sampling or Markov chain Monte Carlo can be highly inefficient and accordingly require far more iterations than may be practical to implement. Here we propose a sequential Monte Carlo sampler that convincingly overcomes these inefficiencies. We demonstrate its implementation through an epidemiological study of the transmission rate of tuberculosis.
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              Constructing summary statistics for approximate Bayesian computation: semi-automatic approximate Bayesian computation

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                Author and article information

                Journal
                Bulletin of Mathematical Biology
                Bull Math Biol
                Springer Nature
                0092-8240
                1522-9602
                March 2019
                November 15 2018
                March 2019
                : 81
                : 3
                : 676-698
                Article
                10.1007/s11538-018-0532-1
                30443704
                b0a4b714-b820-4a82-a70c-afcfb9ec3f35
                © 2019

                http://www.springer.com/tdm

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