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Please use this identifier to cite or link to this item: http://hdl.handle.net/1959.14/11673

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Title
Bivariate line-fitting methods for allometry
Related
Biological reviews, Vol. 81, Issue 2, p.259-291
DOI
10.1017/S1464793106007007
Publisher
Blackwell Publishers
Date
2006
Author/Creator
Warton, David I
Author/Creator
Wright, Ian J
Author/Creator
Falster, Daniel S
Author/Creator
Westoby, Mark
Description
Fitting a line to a bivariate dataset can be a deceptively complex problem, and there has been much debate on this issue in the literature. In this review, we describe for the practitioner the essential features of line-fitting methods for estimating the relationship between two variables: what methods are commonly used, which method should be used when, and how to make inferences from these lines to answer common research questions. A particularly important point for line-fitting in allometry is that usually, two sources of error are present (which we call measurement and equation error), and these have quite different implications for choice of line-fitting method. As a consequence, the approach in this review and the methods presented have subtle but important differences from previous reviews in the biology literature. Linear regression, major axis and standardised major axis are alternative methods that can be appropriate when there is no measurement error. When there is measurement error, this often needs to be estimated and used to adjust the variance terms in formulae for line-fitting. We also review line-fitting methods for phylogenetic analyses. Methods of inference are described for the line-fitting techniques discussed in this paper. The types of inference considered here are testing if the slope or elevation equals a given value, constructing confidence intervals for the slope or elevation, comparing several slopes or elevations, and testing for shift along the axis amongst several groups. In some cases several methods have been proposed in the literature. These are discussed and compared. In other cases there is little or no previous guidance available in the literature. Simulations were conducted to check whether the methods of inference proposed have the intended coverage probability or Type I error. We identified the methods of inference that perform well and recommend the techniques that should be adopted in future work.
Description
33 page(s)
Subject Keyword
model II regression
Subject Keyword
errors-in-variables models
Subject Keyword
standardised major axis
Subject Keyword
functional and structural relationships
Subject Keyword
measurement error
Subject Keyword
method-of-moments regression
Subject Keyword
test for common slopes
Subject Keyword
analysis of covariance
Resource Type
journal article
Organisation
Macquarie University. Dept. of Biological Sciences

Identifier
http://hdl.handle.net/1959.14/11673
Identifier
ISSN:1469-185X
Identifier
mq-rm-2006000104
Language
eng
Reviewed
Reviewed
Save/E-mail Citation
Citation Format
E-mail Address
Subject
"Biological reviews"
 
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