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Efficient experimental designs when most treatments are unreplicated
Authors:RJ Martin  N Chauhan  BSP Chan
Institution:a Department of Mathematics and Statistics, University of Otago, Dunedin, New Zealand
b Protherics plc, Runcorn, Cheshire, WA7 4QX, UK
c School of Physical Sciences, University of Queensland, Brisbane, Qld 4072, Australia
d ABN-Amro Bank, Hong Kong, China
Abstract:In early generation variety trials, large numbers of new breeders’ lines (varieties) may be compared, with each having little seed available. A so-called unreplicated trial has each new variety on just one plot at a site, but includes several replicated control varieties, making up around 10% and 20% of the trial. The aim of the trial is to choose some (usually around one third) good performing new varieties to go on for further testing, rather than precise estimation of their mean yields.Now that spatial analyses of data from field experiments are becoming more common, there is interest in an efficient layout of an experiment given a proposed spatial analysis and an efficiency criterion. Common optimal design criteria values depend on the usual C-matrix, which is very large, and hence it is time consuming to calculate its inverse. Since most varieties are unreplicated, the variety incidence matrix has a simple form, and some matrix manipulations can dramatically reduce the computation needed. However, there are many designs to compare, and numerical optimisation lacks insight into good design features. Some possible design criteria are discussed, and approximations to their values considered. These allow the features of efficient layouts under spatial dependence to be given and compared.
Keywords:Dependent observations  Early generation variety trials  Generalized least-squares  Optimality criteria  Optimal design
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