Journal article

Analysis of sloppiness in model simulations: Unveiling parameter uncertainty when mathematical models are fitted to data

GM Monsalve-Bravo, BAJ Lawson, C Drovandi, K Burrage, KS Brown, CM Baker, SA Vollert, K Mengersen, E McDonald-Madden, MP Adams

Science Advances | Published : 2022

Open access

Abstract

This work introduces a comprehensive approach to assess the sensitivity of model outputs to changes in parameter values, constrained by the combination of prior beliefs and data. This approach identifies stiff parameter combinations strongly affecting the quality of the model-data fit while simultaneously revealing which of these key parameter combinations are informed primarily by the data or are also substantively influenced by the priors. We focus on the very common context in complex systems where the amount and quality of data are low compared to the number of model parameters to be collectively estimated, and showcase the benefits of this technique for applications in biochemistry, eco..

View full abstract

University of Melbourne Researchers

Grants

Awarded by Australian Research Council (ARC) Centre of Excellence for Mathematical and Statistical Frontiers grant


Awarded by ARC Centre of Excellence for Plant Success in Nature and Agriculture


Awarded by NSF grant MCB


Awarded by ARC Linkage grant


Awarded by ARC Discovery Early Career Researcher Award


Awarded by Australian Research Council


Funding Acknowledgements

This work has been supported by a Research Stimulus (RS) Postdoctoral Fellowship from the University of Queensland (to G.M.M.-B.), Australian Research Council (ARC) Centre of Excellence for Mathematical and Statistical Frontiers grant no. CE140100049 (to B.A.J.L.), ARC Centre of Excellence for Plant Success in Nature and Agriculture grant no. CE200100015 (to K.B.), NSF grant MCB no. 1715342 (to K.S.B.), ARC Linkage grant no. LP160100496 (to E.M.-M.), and ARC Discovery Early Career Researcher Award no. DE200100683 (to M.P.A.).