Bayesian design of experiments for generalised linear models and dimensional analysis with industrial and scientific application
Bayesian design of experiments for generalised linear models and dimensional analysis with industrial and scientific application
The design of an experiment can be always be considered at least implicitly Bayesian, with prior knowledge used informally to aid decisions such as the variables to be studied and the choice of a plausible relationship between the explanatory variables and measured responses. Bayesian methods allow uncertainty in these decisions to be incorporated into design selection through prior distributions that encapsulate information available from scientific knowledge or previous experimentation. Further, a design may be explicitly tailored to the aim of the experiment through a decision-theoretic approach using an appropriate loss function. We review the area of decision-theoretic Bayesian design, with particular emphasis on recent advances in computational methods. For many problems arising in industry and science, experiments result in a discrete response that is well described by a member of the class of generalised linear models. Bayesian design for such nonlinear models is often seen as impractical as the expected loss is analytically intractable and numerical approximations are usually computationally expensive. We describe how Gaussian process emulation, commonly used in computer experiments, can play an important role in facilitating Bayesian design for realistic problems. A main focus is the combination of Gaussian process regression to approximate the expected loss with cyclic descent (coordinate exchange) optimisation algorithms to allow optimal designs to be found for previously infeasible problems. We also present the first optimal design results for statistical models formed from dimensional analysis, a methodology widely employed in the engineering and physical sciences to produce parsimonious and interpretable models. Using the famous paper helicopter experiment, we show the potential for the combination of Bayesian design, generalised linear models and dimensional analysis to produce small but informative experiments.
91-103
Woods, David C.
ae21f7e2-29d9-4f55-98a2-639c5e44c79c
Overstall, Antony M.
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Adamou, Maria
45a86451-1944-440f-ab19-ccefc9a7b7f7
Waite, Timothy W.
67ff61af-f85f-4cc7-a7b8-4f188b624266
2017
Woods, David C.
ae21f7e2-29d9-4f55-98a2-639c5e44c79c
Overstall, Antony M.
c1d6c8bd-1c5f-49ee-a845-ec9ec7b20910
Adamou, Maria
45a86451-1944-440f-ab19-ccefc9a7b7f7
Waite, Timothy W.
67ff61af-f85f-4cc7-a7b8-4f188b624266
Woods, David C., Overstall, Antony M., Adamou, Maria and Waite, Timothy W.
(2017)
Bayesian design of experiments for generalised linear models and dimensional analysis with industrial and scientific application.
Quality Engineering, 29 (1), .
(doi:10.1080/08982112.2016.1246045).
Abstract
The design of an experiment can be always be considered at least implicitly Bayesian, with prior knowledge used informally to aid decisions such as the variables to be studied and the choice of a plausible relationship between the explanatory variables and measured responses. Bayesian methods allow uncertainty in these decisions to be incorporated into design selection through prior distributions that encapsulate information available from scientific knowledge or previous experimentation. Further, a design may be explicitly tailored to the aim of the experiment through a decision-theoretic approach using an appropriate loss function. We review the area of decision-theoretic Bayesian design, with particular emphasis on recent advances in computational methods. For many problems arising in industry and science, experiments result in a discrete response that is well described by a member of the class of generalised linear models. Bayesian design for such nonlinear models is often seen as impractical as the expected loss is analytically intractable and numerical approximations are usually computationally expensive. We describe how Gaussian process emulation, commonly used in computer experiments, can play an important role in facilitating Bayesian design for realistic problems. A main focus is the combination of Gaussian process regression to approximate the expected loss with cyclic descent (coordinate exchange) optimisation algorithms to allow optimal designs to be found for previously infeasible problems. We also present the first optimal design results for statistical models formed from dimensional analysis, a methodology widely employed in the engineering and physical sciences to produce parsimonious and interpretable models. Using the famous paper helicopter experiment, we show the potential for the combination of Bayesian design, generalised linear models and dimensional analysis to produce small but informative experiments.
Text
QE_ace_revision.pdf
- Accepted Manuscript
More information
Accepted/In Press date: 5 October 2016
e-pub ahead of print date: 13 October 2016
Published date: 2017
Organisations:
Statistics, Statistical Sciences Research Institute
Identifiers
Local EPrints ID: 402065
URI: http://eprints.soton.ac.uk/id/eprint/402065
ISSN: 0898-2112
PURE UUID: 2c1beb9b-2f06-4ef9-8150-6a36f620a517
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Date deposited: 27 Oct 2016 10:28
Last modified: 15 Mar 2024 06:01
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Author:
Maria Adamou
Author:
Timothy W. Waite
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