# ANOVA and Blocking Design

I have a field experiment carried out with trees in which we have planted different genotypes in a little plantation following a randomized complete block design (RCBD). Now I want to do the analysis in R but I have some doubts about how to do it. In a nutshell, I have 3 blocks and 5 genotypes, in addition to several variables we've measured, one of those is HEIGHT. The code I am using to do the ANOVA test is:

``````fit <- lm(HEIGHT~GENOTYPE+BLOCK,data=data)

anova(fit)
``````

In some webpages I've seen that they write:

``````lm(HEIGHT~BLOCK+GENOTYPE,data=data)
``````

I don't know which is exactly the difference but I've tried both linear models (lm) and the results are not the same. The question is very simple: why? What is exactly what I'm telling to R when I write "Height~Genotype+Block" and when I'm telling "Height~Block+Genotype"? The other question is: Am I doing the blocking ANOVA correctly?

Thank you very much in advance!!

• My guess is your data are unbalanced. You'll find that R uses sequential ("Type I") sums of squares, and so the results from `anova` will change depending on factor order when the data are unbalanced. Lots of info out there about this. Jul 17 '15 at 15:11

``````    fit <- aov(HEIGHT ~ GENOTYPE + BLOCK, data=data)