Modelling fish growth: Model selection, multi-model inference and model selection uncertainty

被引:274
|
作者
Katsanevakis, Stelios [1 ]
机构
[1] Univ Athens, Dept Zool Marine Biol, Sch Biol, Athens 15784, Greece
关键词
Bertalanffy; Gompertz; growth models; logistic; Schnute-Richards;
D O I
10.1016/j.fishres.2006.07.002
中图分类号
S9 [水产、渔业];
学科分类号
0908 ;
摘要
Model selection based on information theory is a relatively new paradigm in biological sciences with several advantages over the classical approaches. The aim of the present study was to apply information theory in the area of modelling fish growth and to show how model selection uncertainty may be taken into account when estimating growth parameters. The methodology was applied for length-age data of four species of fish, taken from the literature. Five-candidate models were fitted to each dataset: von Bertalanffy growth model (VBGM), generalized VBGM, Gompertz growth model, Schnute-Richards growth model, and logistic. In each case, the 'best' model was selected by minimizing the small-sample, bias-corrected form of the Akaike information criterion (AIC). To quantify the plausibility of each model, given the data and the set of five models, the 'Akaike weight' omega(i) of each model was calculated. The average model was estimated for each case based on wi. Following a multi-model inference (MMI) approach, the model-averaged asymptotic length L. for each species was estimated, using all five models, by model-averaging estimations of L. and weighting the prediction of each model by wi. In the examples of this study, model selection uncertainty caused a magnification of the standard error of the asymptotic length of the best model (up to 3.9 times) and thus in all four cases estimating L. from just the best model would have caused overestimation of precision of the asymptotic length. The VBGM, when used for inference, without being the best model, could cause biased point estimation and false evaluation of precision. Model selection uncertainty should not be ignored even if VBGM is the best model. Multi-model inference by model-averaging, based on Akaike weights, is recommended for making robust parameter estimations and for dealing with uncertainty in model selection. (c) 2006 Elsevier B.V. All rights reserved.
引用
收藏
页码:229 / 235
页数:7
相关论文
共 50 条
  • [1] Multi-model approach to model selection
    Stoica, P
    Selén, Y
    Jian, L
    DIGITAL SIGNAL PROCESSING, 2004, 14 (05) : 399 - 412
  • [2] Multi-model subset selection
    Christidis, Anthony-Alexander
    Van Aelst, Stefan
    Zamar, Ruben
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2025, 203
  • [3] Evaluating modelling uncertainty for model selection
    Snowling, SD
    Kramer, JR
    ECOLOGICAL MODELLING, 2001, 138 (1-3) : 17 - 30
  • [4] Uncertainty modeling and model selection for geometric inference
    Kanatani, K
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2004, 26 (10) : 1307 - 1319
  • [5] Modelling fish growth:: multi-model inference as a better alternative to a priori using von Bertalanffy equation
    Katsanevakis, Stelios
    Maravelias, Christos D.
    FISH AND FISHERIES, 2008, 9 (02) : 178 - 187
  • [6] A New Motion Model Selection Approach for Multi-Model Particle Filters
    Ucar, Murat Barkan
    Yilmaz, Derya
    RADIOENGINEERING, 2019, 28 (04) : 793 - 800
  • [7] Multi-Model Inference in Biogeography
    Millington, James D. A.
    Perry, George L. W.
    GEOGRAPHY COMPASS, 2011, 5 (07): : 448 - 463
  • [8] Dynamical system identification, model selection, and model uncertainty quantification by Bayesian inference
    Niven, Robert K.
    Cordier, Laurent
    Mohammad-Djafari, Ali
    Abel, Markus
    Quade, Markus
    CHAOS, 2024, 34 (08)
  • [9] An EA multi-model selection for SVM multiclass schemes
    Lebrun, G.
    Lezoray, O.
    Charrier, C.
    Cardot, H.
    COMPUTATIONAL AND AMBIENT INTELLIGENCE, 2007, 4507 : 260 - +
  • [10] Multi-Model Selection and Analysis for COVID-19
    Ma, Nuri
    Ma, Weiyuan
    Li, Zhiming
    FRACTAL AND FRACTIONAL, 2021, 5 (03)