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Formula for one-way anova is:

Y_i = mi_i + eps_ij

Where mi_i is mean in i-th group I can write mi_i = mi + alpha_i, where mi is global mean and alpha_i is difference between globan mean and mean in i-th group.

There are two assumptions for coefficient:
1. (default in R) alpha_1=0,
2. (I think more popular and for me clearer) sum_i(alpha_i)=0

I can "switch" between these two assumption when I make ANOVA in R using lm:

 #1.
 lm(Y~X, dataset)
 #2.
 lm(Y~X-1, dataset)

My point is I want to know how to switch in the same way in two-way anova in R. Two-way ANOVA:

Y_ijm = mi + alpha_i + beta_j +gamma_ij +eps_ijm

Assumptions:
1. (default in R) alpha1=0, beta1=0, gamma_i1=0, gamma_1j=0
2. (clearer for me) sum_i(alpha_i) = 0, sum_j(beta_j)=0, sum_i(gamma_ij)=0, sum_j(gamma_ij)=0.

in R

 lm(Y~X1*X2, dataset) 

works with the first assumption. My question is how can I "switch" to the second assumptinon? I tried to add -1 or similiar but it doesn't work as I want to.

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options(contrasts = c(unordered="contr.sum", ordered="contr.poly"))? –  Roland Apr 21 '14 at 18:15

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