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Så används statistiska metoder i jordbruksförsök Svenska statistikfrämjandets vårkonferens den 23 mars 2012 i Alnarp Johannes Forkman, Fältforsk, SLU
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Agricultural field experiments Experimental treatments Varieties Weed control treatments Plant protection treatments Tillage methods Fertilizers
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Experimental design Allocate Treatments A and B to eight plots... AAAABBBB ABABABAB ABBAABBA Option 1: Option 2: Option 3:
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Systematic error The plots differ... The treatments are not compared on equal terms. There will be a systematic error in the comparison of A and B.
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Randomise the treatments. This procedure transforms the systematic error into a random error. R. A. Fisher
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Example TreatmentYield (kg/ha)Mean (kg/ha) A8165 A7792 A8397 A77648029.3 B8483 B8602 B8641 B87838627.2 The difference is 598
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Randomisation test The observed difference is 598 kg/ha. There are 8!/(4! 4!) = 70 possible random arrangements. The two most extreme differences are 598 and -598. P-value = 2/70 = 0.029
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t-test Compare with a t-distribution with 6 degrees of freedom P-value = 0.011
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The randomisation model
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The approximate model
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A crucial assumption Unit-Treatment additivity: Variances and covariances do not depend on treatment
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Heterogeneity A B
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Inference about what?? Randomisation model: The average if the treatment was given to all plots of the experiment. The approximate model: The average if the treatment was given to infinitely many plots? Sample Population
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Variance in a difference
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Independent errors Randomisation gives approximately independent error terms Information about plot position was ignored This information can be utilized BABAABBA
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Tobler’s law of geography “Everything is related to everything else, but near things are more related than distant things.” Waldo Tobler
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Random fields The random function Z(s) is a stochastic process if the plots belong to a space in one dimension random field, if the plots belong to a space in two or more dimensions
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Spatial modelling Can improve precision. Still rare in analysis of agricultural field experiments. There are many possible spatial models and methods. Can be used whether or not the treatments were randomized... Which is the best design for spatial analysis?
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Randomised block design
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Incomplete block design Strata Replicates Blocks Plots
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Ofullständiga block
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DACB BCAD CBDABDCACBAD BCAD 1 3 2 2 1 3 Replicate I Replicate II Strata Replicates Plots Subplots Split-plot design
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DACB BCAD CBDABDCACBAD BCA D 1 3 2 2 1 3 Replicate I Replicate II DA C BBCAD C BDABD C A C BADBCAD D A C BB C A DC B D AB DC A C BA D B C A D DACBBCAD C BD A BD CA CBADBCAD D A CBBCAD C BDABD C ACB A DBCAD 1a 1b 2a 2b 3 Comparison
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sown conventionally sown with no tillage cultivar 2 cultivar 1 cultivar 3 Mo applied Each replicate: A design with several strata Bailey, R. A. (2008). Design of comparative experiments. Cambridge University Press.
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The linear mixed model y = X + Zu + e X: design matrix for fixed effects (treatments) Z: design matrix for random effects (strata) u is N(0, G)e is N(0, R)
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Bates about error strata “Those who long ago took courses in "analysis of variance" or "experimental design" that concentrated on designs for agricultural experiments would have learned methods for estimating variance components based on observed and expected mean squares and methods of testing based on "error strata". (If you weren't forced to learn this, consider yourself lucky.) It is therefore natural to expect that the F statistics created from an lmer model (and also those created by SAS PROC MIXED) are based on error strata but that is not the case.”
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Approximate t and F-tests The number of degrees of freedom is an issue. SAS: the Satterthwaite or the Kenward & Roger method. when L is one-dimensional, and otherwise.
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Likelihood ratio test Full model (FM): p parameters Reduced model (RM): q parameters is asymptotically 2 with p – q degrees of freedom.
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Bayesian analysis y = X + Zu + e u is N(0, G)e is N(0, R) G is diag(Φ) R is diag(σ 2 ) Independent priori distributions: p( ), p(Φ) Sampling from the posterior distribution: p( Φ | y)
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P-values in agricultural research Only discuss statistically significant results Do not discuss biologically insignificant results (although they are statistically significant). “Limit statements about significance to those which have a direct bearing on the aims of the research”. (Onofri et al., Weed Science, 2009)
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Shrinkage estimators Galwey (2006). Introduction to mixed modelling. Wiley.
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Fixed or random varieties? Fixed varieties (BLUE) Few varieties Estimation of differences Random varieties (BLUP) Many varieties Ranking of varieties
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Conclusions based on a simulation study i.Modelling treatment as random is efficient for small block experiments. ii.A model with normally distributed random effects performs well, even if the effects are not normally distributed. iii.Bayesian methods can be recommended for inference about treatment differences.
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Summary Fisher’s ideas about randomisation and blocking are still predominant. Strong focus on p-values. Linear mixed models are used extensively. Spatial and Bayesian methods are used less often. The question is what is random and fixed, and how to calculate p-values.
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Tack för uppmärksamheten!
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