Frontiers in Ecology and Evolution (Nov 2019)

Incorporating Parameter Estimability Into Model Selection

  • Jake M. Ferguson,
  • Mark L. Taper,
  • Mark L. Taper,
  • Rosana Zenil-Ferguson,
  • Marie Jasieniuk,
  • Bruce D. Maxwell

DOI
https://doi.org/10.3389/fevo.2019.00427
Journal volume & issue
Vol. 7

Abstract

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We investigate a class of information criteria based on the informational complexity criterion (ICC), which penalizes model fit based on the degree of dependency among parameters. In addition to existing forms of ICC, we develop a new complexity measure that uses the coefficient of variation matrix, a measure of parameter estimability, and a novel compound criterion that accounts for both the number of parameters and their informational complexity. We compared the performance of ICC and these variants to more traditionally used information criteria (i.e., AIC, AICc, BIC) in three different simulation experiments: simple linear models, nonlinear population abundance growth models, and nonlinear plant biomass growth models. Criterion performance was evaluated using the frequency of selecting the generating model, the frequency of selecting the model with the best predictive ability, and the frequency of selecting the model with the minimum Kullback-Leibler divergence. We found that the relative performance of each criterion depended on the model set, process variance, and sample size used. However, one of the compound criteria performed best on average across all conditions at identifying both the model used to generate the data and at identifying the best predictive model. This result is an important step forward in developing information criterion that select parsimonious models with interpretable and tranferrable parameters.

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