Field trials for variety selection often exhibit spatial correlation between plots. When multivariate data are analysed from these field trials, there is the added complication in having to simultaneously account for correlation between the traits at both the residual and genetic levels. This may be temporal correlation in the case of multi-harvest data from perennial crop field trials, or between-trait correlation in multi-trait data sets. Use of parsimonious yet plausible models for the variance–covariance structure of the residuals for such data is a key element to achieving an efficient and inferentially sound analysis. In this paper, a model is developed for the residual variance–covariance structure firstly by considering a multivaria...
Direct gradient analyses in spatial genetics provide unique opportunities to describe the inherent c...
In the presence of spatial heterogeneity in experimental fields, the traditional random blocking has...
The AR(1) and power models of spatial correlation are popular in the analysis of field trial data. ...
The most common procedure for analyzing multi-environmental trials is based on the assumption that t...
Variety selection in perennial pasture crops involves identifying best varieties from data collected...
The analysis of a series of crop variety trials often proceeds using a mixed model in which the data...
The most common procedure for analyzing multi-environmental trials is based on the assumption that t...
The recommendation of new plant varieties for commercial use requires reliable and accurate predicti...
Trials in the early stages of selection are often subject to variation arising from spatial variabil...
Trials in the early stages of selection are often subject to variation arising from spatial variabil...
This paper reviews methods for spatial analysis of field trials in one and two dimensions with a par...
In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess the intensi...
Abstract In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess t...
Modelling field spatial patterns is standard practice for the analysis of plant breeding. Jointly fi...
An important aim of the analysis of agricultural field trials is to obtain good predictions for geno...
Direct gradient analyses in spatial genetics provide unique opportunities to describe the inherent c...
In the presence of spatial heterogeneity in experimental fields, the traditional random blocking has...
The AR(1) and power models of spatial correlation are popular in the analysis of field trial data. ...
The most common procedure for analyzing multi-environmental trials is based on the assumption that t...
Variety selection in perennial pasture crops involves identifying best varieties from data collected...
The analysis of a series of crop variety trials often proceeds using a mixed model in which the data...
The most common procedure for analyzing multi-environmental trials is based on the assumption that t...
The recommendation of new plant varieties for commercial use requires reliable and accurate predicti...
Trials in the early stages of selection are often subject to variation arising from spatial variabil...
Trials in the early stages of selection are often subject to variation arising from spatial variabil...
This paper reviews methods for spatial analysis of field trials in one and two dimensions with a par...
In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess the intensi...
Abstract In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess t...
Modelling field spatial patterns is standard practice for the analysis of plant breeding. Jointly fi...
An important aim of the analysis of agricultural field trials is to obtain good predictions for geno...
Direct gradient analyses in spatial genetics provide unique opportunities to describe the inherent c...
In the presence of spatial heterogeneity in experimental fields, the traditional random blocking has...
The AR(1) and power models of spatial correlation are popular in the analysis of field trial data. ...