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Get Free AccessMathematical models of scientific data can be formally compared using Bayesian model evidence. Previous applications in the biological sciences have mainly focussed on model selection in which one first selects the model with the highest evidence and then makes inferences based on the parameters of that model. This "best model" approach is very useful but can become brittle if there are a large number of models to compare, and if different subjects use different models. To overcome this shortcoming we propose the combination of two further approaches: (i) family level inference and (ii) Bayesian model averaging within families. Family level inference removes uncertainty about aspects of model structure other than the characteristic of interest. For example: What are the inputs to the system? Is processing serial or parallel? Is it linear or nonlinear? Is it mediated by a single, crucial connection? We apply Bayesian model averaging within families to provide inferences about parameters that are independent of further assumptions about model structure. We illustrate the methods using Dynamic Causal Models of brain imaging data.
W.D. Penny, Klaas Ε. Stephan, Jean Daunizeau, Maria João Rosa, Karl Friston, Thomas M. Schofield, Alexander Leff (2010). Comparing Families of Dynamic Causal Models. PLoS Computational Biology, 6(3), pp. e1000709-e1000709, DOI: 10.1371/journal.pcbi.1000709.
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Type
Article
Year
2010
Authors
7
Datasets
0
Total Files
0
Language
English
Journal
PLoS Computational Biology
DOI
10.1371/journal.pcbi.1000709
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