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Trade‐offs between accuracy and interpretability in von B ertalanffy random‐effects models of growth
Author(s) -
Vincenzi Simone,
Crivelli Alain J.,
Munch Stephan,
Skaug Hans J.,
Mangel Marc
Publication year - 2016
Publication title -
ecological applications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.864
H-Index - 213
eISSN - 1939-5582
pISSN - 1051-0761
DOI - 10.1890/15-1177
Subject(s) - interpretability , goodness of fit , foraging , ecology , replicate , population , anabolism , function (biology) , statistics , econometrics , biology , mathematics , computer science , evolutionary biology , machine learning , medicine , environmental health , endocrinology
Better understanding of variation in growth will always be an important problem in ecology. Individual variation in growth can arise from a variety of processes; for example, individuals within a population vary in their intrinsic metabolic rates and behavioral traits, which may influence their foraging dynamics and access to resources. However, when adopting a growth model, we face trade‐offs between model complexity, biological interpretability of parameters, and goodness of fit. We explore how different formulations of the von B ertalanffy g rowth f unction (v BGF ) with individual random effects and environmental predictors affect these trade‐offs. In the v BGF , the growth of an organism results from a dynamic balance between anabolic and catabolic processes. We start from a formulation of the v BGF that models the anabolic coefficient ( q ) as a function of the catabolic coefficient ( k ), a coefficient related to the properties of the environment (γ) and a parameter that determines the relative importance of behavior and environment in determining growth (ψ). We treat the v BGF parameters as a function of individual random effects and environmental variables. We use simulations to show how different functional forms and individual or group variability in the growth function's parameters provide a very flexible description of growth trajectories. We then consider a case study of two fish populations of S almo marmoratus and S almo trutta to test the goodness of fit and predictive power of the models, along with the biological interpretability of v BGF 's parameters when using different model formulations. The best models, according to AIC , included individual variability in both k and γ and cohort as predictor of growth trajectories, and are consistent with the hypothesis that habitat selection is more important than behavioral and metabolic traits in determining lifetime growth trajectories of the two fish species. Model predictions of individual growth trajectories were largely more accurate than predictions based on mean size‐at‐age of fish. Our method shares information across individuals, and thus, for both fish populations investigated, allows using a single measurement early in the life of individual fish or cohort to obtain accurate predictions of lifetime individual or cohort size‐at‐age.

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