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SEMI‐MECHANISTIC MODELLING IN NONLINEAR REGRESSION: A CASE STUDY
Author(s) -
Domijan Katarina,
Jorgensen Murray,
Reid Jeff
Publication year - 2006
Publication title -
australian and new zealand journal of statistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.434
H-Index - 41
eISSN - 1467-842X
pISSN - 1369-1473
DOI - 10.1111/j.1467-842x.2006.00446.x
Subject(s) - generality , parameterized complexity , complement (music) , nonlinear system , mathematics , range (aeronautics) , field (mathematics) , linear model , mathematical optimization , computer science , econometrics , algorithm , statistics , engineering , psychology , biochemistry , chemistry , physics , quantum mechanics , complementation , pure mathematics , psychotherapist , gene , phenotype , aerospace engineering
Summary This paper discusses the use of highly parameterized semi‐mechanistic nonlinear models with particular reference to the PARJIB crop response model of Reid (2002)[Yield response to nutrient supply across a wide range of conditions 1. Model derivation. Field Crops Research 77, 161–171]. Compared to empirical linear approaches, such models promise improved generality of application but present considerable challenges for estimation. Some success has been achieved with a fitting approach that uses a Levenberg–Marquardt algorithm starting from initial values determined by a genetic algorithm. Attention must be paid, however, to correlations between parameter estimates and an approach is described to identify these based on large simulated datasets. This work illustrates the value for the scientist in exploring the correlation structure in mechanistic or semi‐mechanistic models. Such information might be used to reappraise the structure of the model itself, especially if the experimental evidence is not strong enough to allow estimation of a parameter free of assumptions about the values of others. Thus statistical modelling and analysis can complement mechanistic studies, making more explicit what is known and what is not known about the processes being modelled and guiding further research.