Mixed models and multilevel data structures in agriculture

Multilevel data structures can occur in many areas of agricultural research for instance on-farm trials, where there can be information at the village, farm and plot or animal level. Analysis of variance except in balanced or nested designs - has been difficult to apply to data with a multilevel str...

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Detalles Bibliográficos
Autores principales: Allan, E., Rowlands, G.J.
Formato: Informe técnico
Lenguaje:Inglés
Publicado: International Livestock Research Institute 2001
Materias:
Acceso en línea:https://hdl.handle.net/10568/2872
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author Allan, E.
Rowlands, G.J.
author_browse Allan, E.
Rowlands, G.J.
author_facet Allan, E.
Rowlands, G.J.
author_sort Allan, E.
collection Repository of Agricultural Research Outputs (CGSpace)
description Multilevel data structures can occur in many areas of agricultural research for instance on-farm trials, where there can be information at the village, farm and plot or animal level. Analysis of variance except in balanced or nested designs - has been difficult to apply to data with a multilevel structure. Mixed modelling is becoming a standard approach for analysing these types of data. The mixed model facilities are now available in some of the more powerful statistical packages such as Genstat and SAS. The purpose of this guide book is to review the general concepts of mixed models. The document illustrates by example how to recognise the structure in the data and how to fit and interpret a mixed model analysis. The reader is expected to be familiar with simple analysis of variance methods. Three examples are used in the discussion. Example one, 'fodder production trial', is a fairly traditional agricultural experiment, and is included to show how mixed modelling links to more traditional analysis. Example two, 'concentrate feeding trial', is an on-farm trial with a slightly 'messy' hierarchical structure. It is used to show how the ideas of example one can be extended to other situations, and to demonstrate the benefits of mixed modelling. Example three, 'sheep breeding trial', is a more specialised example of breeding trial. It discusses the implications of formulating models in different ways.
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spelling CGSpace28722025-11-04T14:12:50Z Mixed models and multilevel data structures in agriculture Allan, E. Rowlands, G.J. agriculture statistical data research data analysis models feed production sheep animal breeding concentrates Multilevel data structures can occur in many areas of agricultural research for instance on-farm trials, where there can be information at the village, farm and plot or animal level. Analysis of variance except in balanced or nested designs - has been difficult to apply to data with a multilevel structure. Mixed modelling is becoming a standard approach for analysing these types of data. The mixed model facilities are now available in some of the more powerful statistical packages such as Genstat and SAS. The purpose of this guide book is to review the general concepts of mixed models. The document illustrates by example how to recognise the structure in the data and how to fit and interpret a mixed model analysis. The reader is expected to be familiar with simple analysis of variance methods. Three examples are used in the discussion. Example one, 'fodder production trial', is a fairly traditional agricultural experiment, and is included to show how mixed modelling links to more traditional analysis. Example two, 'concentrate feeding trial', is an on-farm trial with a slightly 'messy' hierarchical structure. It is used to show how the ideas of example one can be extended to other situations, and to demonstrate the benefits of mixed modelling. Example three, 'sheep breeding trial', is a more specialised example of breeding trial. It discusses the implications of formulating models in different ways. 2001 2010-12-09T11:24:24Z 2010-12-09T11:24:24Z Report https://hdl.handle.net/10568/2872 en Open Access application/pdf International Livestock Research Institute
spellingShingle agriculture
statistical data
research
data analysis
models
feed production
sheep
animal breeding
concentrates
Allan, E.
Rowlands, G.J.
Mixed models and multilevel data structures in agriculture
title Mixed models and multilevel data structures in agriculture
title_full Mixed models and multilevel data structures in agriculture
title_fullStr Mixed models and multilevel data structures in agriculture
title_full_unstemmed Mixed models and multilevel data structures in agriculture
title_short Mixed models and multilevel data structures in agriculture
title_sort mixed models and multilevel data structures in agriculture
topic agriculture
statistical data
research
data analysis
models
feed production
sheep
animal breeding
concentrates
url https://hdl.handle.net/10568/2872
work_keys_str_mv AT allane mixedmodelsandmultileveldatastructuresinagriculture
AT rowlandsgj mixedmodelsandmultileveldatastructuresinagriculture