Analysing correlated count data from field trials
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Published:1998
Issue:6
Volume:38
Page:609
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ISSN:0816-1089
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Container-title:Australian Journal of Experimental Agriculture
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language:en
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Short-container-title:Aust. J. Exp. Agric.
Author:
Alston C.,Murison R.
Abstract
Summary. Field experiments are often affected by both
spatial and temporal (i.e. repeated measures) correlation. In order to obtain
an analysis that is scientifically valid it is important to recognise the
underlying error structure and analyse the data accordingly.
We will discuss the analysis of count data which is spatially and temporally
correlated, and illustrate the difference between an independent error
structure model and a marginal Quasi-Likelihood model which attempts to
account for the correlation present in the data. We shall then show the
possible impact of inefficient analysis techniques on the subsequent economic
decisions.
Publisher
CSIRO Publishing
Subject
General Agricultural and Biological Sciences