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Joining forces of Bayesian and frequentist methodology: a study for inference in the presence of non-identifiability

Raue, Andreas (author)
University of Freiburg, Germany
Kreutz, Clemens (author)
University of Freiburg, Germany
Joachim Theis, Fabian (author)
Technical University of Munich, Germany
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Timmer, Jens (author)
Linköpings universitet,Hälsouniversitetet,Cellbiologi
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 (creator_code:org_t)
2013-02-13
2013
English.
In: Philosophical Transactions. Series A. - : Royal Society, The. - 1364-503X .- 1471-2962. ; 371:1984
  • Journal article (peer-reviewed)
Abstract Subject headings
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  • Increasingly complex applications involve large datasets in combination with nonlinear and high-dimensional mathematical models. In this context, statistical inference is a challenging issue that calls for pragmatic approaches that take advantage of both Bayesian and frequentist methods. The elegance of Bayesian methodology is founded in the propagation of information content provided by experimental data and prior assumptions to the posterior probability distribution of model predictions. However, for complex applications, experimental data and prior assumptions potentially constrain the posterior probability distribution insufficiently. In these situations, Bayesian Markov chain Monte Carlo sampling can be infeasible. From a frequentist point of view, insufficient experimental data and prior assumptions can be interpreted as non-identifiability. The profile-likelihood approach offers to detect and to resolve non-identifiability by experimental design iteratively. Therefore, it allows one to better constrain the posterior probability distribution until Markov chain Monte Carlo sampling can be used securely. Using an application from cell biology, we compare both methods and show that a successive application of the two methods facilitates a realistic assessment of uncertainty in model predictions.

Keyword

identifiability
profile likelihood
Bayesian Markov chain Monte Carlo sampling
posterior propriety
propagation of uncertainty
prediction uncertainty
TECHNOLOGY
TEKNIKVETENSKAP

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