Analysis of variance in soil research: let the analysis fit the design

Sound design for experiments on soil is based on two fundamental principles: replication and randomization. Replication enables investigators to detect and measure contrasts between treatments against the backdrop of natural variation. Random allocation of experimental treatments to units enables ef...

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Main Authors: Webster, R., Lark, Murray
Format: Article
Published: Wiley 2018
Online Access:https://eprints.nottingham.ac.uk/49550/
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author Webster, R.
Lark, Murray
author_facet Webster, R.
Lark, Murray
author_sort Webster, R.
building Nottingham Research Data Repository
collection Online Access
description Sound design for experiments on soil is based on two fundamental principles: replication and randomization. Replication enables investigators to detect and measure contrasts between treatments against the backdrop of natural variation. Random allocation of experimental treatments to units enables effects to be estimated without bias and hypotheses to be tested. For inferential tests of effects to be valid an analysis of variance (anova) of the experimental data must match exactly the experimental design. Completely randomized designs are usually inefficient. Blocking will usually increase precision, and its role must be recognized as a unique entry in an anova table. Factorial designs enable questions on two or more factors and their interactions to be answered simultaneously, and split-plot designs may enable investigators to combine factors that require disparate amounts of land for each treatment. Each such design has its unique correct anova; no other anova will do. One outcome of an anova is a test of significance. If it turns out to be positive then the investigator may examine the contrasts between treatments to discover which themselves are significant. Those contrasts should have been ones in which the investigator was interested at the outset and which the experiment was designed to test. Post-hoc testing of all possible contrasts is deprecated as unsound, although the procedures may guide an investigator to further experimentation. Examples of the designs with simulated data and programs in GenStat and R for the analyses of variance are provided as File S1.
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spelling nottingham-495502020-05-04T19:27:37Z https://eprints.nottingham.ac.uk/49550/ Analysis of variance in soil research: let the analysis fit the design Webster, R. Lark, Murray Sound design for experiments on soil is based on two fundamental principles: replication and randomization. Replication enables investigators to detect and measure contrasts between treatments against the backdrop of natural variation. Random allocation of experimental treatments to units enables effects to be estimated without bias and hypotheses to be tested. For inferential tests of effects to be valid an analysis of variance (anova) of the experimental data must match exactly the experimental design. Completely randomized designs are usually inefficient. Blocking will usually increase precision, and its role must be recognized as a unique entry in an anova table. Factorial designs enable questions on two or more factors and their interactions to be answered simultaneously, and split-plot designs may enable investigators to combine factors that require disparate amounts of land for each treatment. Each such design has its unique correct anova; no other anova will do. One outcome of an anova is a test of significance. If it turns out to be positive then the investigator may examine the contrasts between treatments to discover which themselves are significant. Those contrasts should have been ones in which the investigator was interested at the outset and which the experiment was designed to test. Post-hoc testing of all possible contrasts is deprecated as unsound, although the procedures may guide an investigator to further experimentation. Examples of the designs with simulated data and programs in GenStat and R for the analyses of variance are provided as File S1. Wiley 2018-01-18 Article PeerReviewed Webster, R. and Lark, Murray (2018) Analysis of variance in soil research: let the analysis fit the design. European Journal of Soil Science, 69 (1). pp. 126-139. ISSN 1365-2389 http://onlinelibrary.wiley.com/doi/10.1111/ejss.12511/abstract doi:10.1111/ejss.12511 doi:10.1111/ejss.12511
spellingShingle Webster, R.
Lark, Murray
Analysis of variance in soil research: let the analysis fit the design
title Analysis of variance in soil research: let the analysis fit the design
title_full Analysis of variance in soil research: let the analysis fit the design
title_fullStr Analysis of variance in soil research: let the analysis fit the design
title_full_unstemmed Analysis of variance in soil research: let the analysis fit the design
title_short Analysis of variance in soil research: let the analysis fit the design
title_sort analysis of variance in soil research: let the analysis fit the design
url https://eprints.nottingham.ac.uk/49550/
https://eprints.nottingham.ac.uk/49550/
https://eprints.nottingham.ac.uk/49550/