Linear Model with Constraints, [R]

I'm quite new to R and I have a following problem:

I have a simple 2-factor linear model:

``````Rate~factor1 + factor2 //factor1 has 8 categorical values, factor2 has 6 categories;
model1 <- lm(Rate~factor1+factor2, data=myData)
``````

And want to put constraints SUM of factor1 coefficients = 0, the same for factor2.

None of the manuals gives any clue how to do this..

I found a link to similar problem here but it is different and I couldnt figure out how to modify it...

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This question was also asked the stats exchange site: stats.stackexchange.com/questions/3143 –  csgillespie Sep 28 '10 at 18:55
@csgillespie: thanks for the link. @Vytautas: please do not cross-post. –  Joshua Ulrich Sep 28 '10 at 21:46
Do you know how to specify a positivity constraint on the fit? How to do the fit so that the final function is always positive independently from the arguments? –  schmi Oct 10 '14 at 8:13

It's described in chapter 6 of MASS (Modern Applied Statistics with S). Use the `contrasts` arg of `lm` (take a look at `?contr.sum` and `?model.matrix.default` for examples).
My answer is the way to force it. If the sums are 0.2 for `factor1` and 0.08 for `factor2`, then the value for the last level of `factor1` is -0.2 and the value for the last level of `factor2` is -0.08. Notice that your regression output is missing a factor level... This is also stated in the link contained in the answer you accepted on stats.stackexchange.com... –  Joshua Ulrich Sep 28 '10 at 19:51