| Literature DB >> 28779969 |
Abstract
Logarithmic transformation is often assumed to be necessary in allometry to accommodate the kind of variation that accompanies multiplicative growth by plants and animals; and the traditional approach to allometric analysis is commonly believed to have important application even when the bivariate distribution of interest is curvilinear on the logarithmic scale. Here I examine four arguments that have been tendered in support of these perceptions. All the arguments are based on misunderstandings about the traditional method for allometric analysis and/or on a lack of familiarity with newer methods of nonlinear regression. Traditional allometry actually has limited utility because it can be used only to fit a two-parameter power equation that assumes lognormal, heteroscedastic error on the original scale. In contrast, nonlinear regression can fit two- and three-parameter power equations with differing assumptions about structure for error directly to untransformed data. Nonlinear regression should be preferred to the traditional method in future allometric analyses.Keywords: Allometry; Logarithms; Nonlinear regression; Power laws; Scaling
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Year: 2017 PMID: 28779969 DOI: 10.1016/j.zool.2017.07.005
Source DB: PubMed Journal: Zoology (Jena) ISSN: 0944-2006 Impact factor: 2.240