Cargando…

Computational modelling for decision-making: where, why, what, who and how

In order to deal with an increasingly complex world, we need ever more sophisticated computational models that can help us make decisions wisely and understand the potential consequences of choices. But creating a model requires far more than just raw data and technical skills: it requires a close c...

Descripción completa

Detalles Bibliográficos
Autores principales: Calder, Muffy, Craig, Claire, Culley, Dave, de Cani, Richard, Donnelly, Christl A., Douglas, Rowan, Edmonds, Bruce, Gascoigne, Jonathon, Gilbert, Nigel, Hargrove, Caroline, Hinds, Derwen, Lane, David C., Mitchell, Dervilla, Pavey, Giles, Robertson, David, Rosewell, Bridget, Sherwin, Spencer, Walport, Mark, Wilson, Alan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society Publishing 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6030334/
https://www.ncbi.nlm.nih.gov/pubmed/30110442
http://dx.doi.org/10.1098/rsos.172096
_version_ 1783337129201369088
author Calder, Muffy
Craig, Claire
Culley, Dave
de Cani, Richard
Donnelly, Christl A.
Douglas, Rowan
Edmonds, Bruce
Gascoigne, Jonathon
Gilbert, Nigel
Hargrove, Caroline
Hinds, Derwen
Lane, David C.
Mitchell, Dervilla
Pavey, Giles
Robertson, David
Rosewell, Bridget
Sherwin, Spencer
Walport, Mark
Wilson, Alan
author_facet Calder, Muffy
Craig, Claire
Culley, Dave
de Cani, Richard
Donnelly, Christl A.
Douglas, Rowan
Edmonds, Bruce
Gascoigne, Jonathon
Gilbert, Nigel
Hargrove, Caroline
Hinds, Derwen
Lane, David C.
Mitchell, Dervilla
Pavey, Giles
Robertson, David
Rosewell, Bridget
Sherwin, Spencer
Walport, Mark
Wilson, Alan
author_sort Calder, Muffy
collection PubMed
description In order to deal with an increasingly complex world, we need ever more sophisticated computational models that can help us make decisions wisely and understand the potential consequences of choices. But creating a model requires far more than just raw data and technical skills: it requires a close collaboration between model commissioners, developers, users and reviewers. Good modelling requires its users and commissioners to understand more about the whole process, including the different kinds of purpose a model can have and the different technical bases. This paper offers a guide to the process of commissioning, developing and deploying models across a wide range of domains from public policy to science and engineering. It provides two checklists to help potential modellers, commissioners and users ensure they have considered the most significant factors that will determine success. We conclude there is a need to reinforce modelling as a discipline, so that misconstruction is less likely; to increase understanding of modelling in all domains, so that the misuse of models is reduced; and to bring commissioners closer to modelling, so that the results are more useful.
format Online
Article
Text
id pubmed-6030334
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher The Royal Society Publishing
record_format MEDLINE/PubMed
spelling pubmed-60303342018-07-17 Computational modelling for decision-making: where, why, what, who and how Calder, Muffy Craig, Claire Culley, Dave de Cani, Richard Donnelly, Christl A. Douglas, Rowan Edmonds, Bruce Gascoigne, Jonathon Gilbert, Nigel Hargrove, Caroline Hinds, Derwen Lane, David C. Mitchell, Dervilla Pavey, Giles Robertson, David Rosewell, Bridget Sherwin, Spencer Walport, Mark Wilson, Alan R Soc Open Sci Computer Science In order to deal with an increasingly complex world, we need ever more sophisticated computational models that can help us make decisions wisely and understand the potential consequences of choices. But creating a model requires far more than just raw data and technical skills: it requires a close collaboration between model commissioners, developers, users and reviewers. Good modelling requires its users and commissioners to understand more about the whole process, including the different kinds of purpose a model can have and the different technical bases. This paper offers a guide to the process of commissioning, developing and deploying models across a wide range of domains from public policy to science and engineering. It provides two checklists to help potential modellers, commissioners and users ensure they have considered the most significant factors that will determine success. We conclude there is a need to reinforce modelling as a discipline, so that misconstruction is less likely; to increase understanding of modelling in all domains, so that the misuse of models is reduced; and to bring commissioners closer to modelling, so that the results are more useful. The Royal Society Publishing 2018-06-20 /pmc/articles/PMC6030334/ /pubmed/30110442 http://dx.doi.org/10.1098/rsos.172096 Text en © 2018 The Authors. http://creativecommons.org/licenses/by/4.0/ Published by the Royal Society under the terms of the Creative Commons Attribution License http://creativecommons.org/licenses/by/4.0/, which permits unrestricted use, provided the original author and source are credited.
spellingShingle Computer Science
Calder, Muffy
Craig, Claire
Culley, Dave
de Cani, Richard
Donnelly, Christl A.
Douglas, Rowan
Edmonds, Bruce
Gascoigne, Jonathon
Gilbert, Nigel
Hargrove, Caroline
Hinds, Derwen
Lane, David C.
Mitchell, Dervilla
Pavey, Giles
Robertson, David
Rosewell, Bridget
Sherwin, Spencer
Walport, Mark
Wilson, Alan
Computational modelling for decision-making: where, why, what, who and how
title Computational modelling for decision-making: where, why, what, who and how
title_full Computational modelling for decision-making: where, why, what, who and how
title_fullStr Computational modelling for decision-making: where, why, what, who and how
title_full_unstemmed Computational modelling for decision-making: where, why, what, who and how
title_short Computational modelling for decision-making: where, why, what, who and how
title_sort computational modelling for decision-making: where, why, what, who and how
topic Computer Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6030334/
https://www.ncbi.nlm.nih.gov/pubmed/30110442
http://dx.doi.org/10.1098/rsos.172096
work_keys_str_mv AT caldermuffy computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT craigclaire computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT culleydave computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT decanirichard computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT donnellychristla computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT douglasrowan computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT edmondsbruce computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT gascoignejonathon computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT gilbertnigel computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT hargrovecaroline computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT hindsderwen computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT lanedavidc computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT mitchelldervilla computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT paveygiles computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT robertsondavid computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT rosewellbridget computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT sherwinspencer computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT walportmark computationalmodellingfordecisionmakingwherewhywhatwhoandhow
AT wilsonalan computationalmodellingfordecisionmakingwherewhywhatwhoandhow