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A Primer for Model Selection: The Decisive Role of Model Complexity

Authors :
Wolfgang Nowak
Marvin Höge
Thomas Wöhling
Source :
Water Resources Research. 54:1688-1715
Publication Year :
2018
Publisher :
American Geophysical Union (AGU), 2018.

Abstract

Selecting a “best” model among several competing candidate models poses an often encountered problem in water resources modeling (and other disciplines which employ models). For a modeler, the best model fulfills a certain purpose best (e.g., flood prediction), which is typically assessed by comparing model simulations to data (e.g., stream flow). Model selection methods find the “best” trade-off between good fit with data and model complexity. In this context, the interpretations of model complexity implied by different model selection methods are crucial, because they represent different underlying goals of modeling. Over the last decades, numerous model selection criteria have been proposed, but modelers who primarily want to apply a model selection criterion often face a lack of guidance for choosing the right criterion that matches their goal. We propose a classification scheme for model selection criteria that helps to find the right criterion for a specific goal, i.e., which employs the correct complexity interpretation. We identify four model selection classes which seek to achieve high predictive density, low predictive error, high model probability, or shortest compression of data. These goals can be achieved by following either nonconsistent or consistent model selection and by either incorporating a Bayesian parameter prior or not. We allocate commonly used criteria to these four classes, analyze how they represent model complexity and what this means for the model selection task. Finally, we provide guidance on choosing the right type of criteria for specific model selection tasks. (A quick guide through all key points is given at the end of the introduction.)

Details

ISSN :
19447973 and 00431397
Volume :
54
Database :
OpenAIRE
Journal :
Water Resources Research
Accession number :
edsair.doi...........6a17a7e4ea4f9fabfb939df9ff0cd68e
Full Text :
https://doi.org/10.1002/2017wr021902