# How is the intercept computed in the GLM fit?

I have been reading the code used by R to fit a generalized linear model (GLM), since the source-code of R is freely available. The algorithm used is called iteratively reweighted least squares (IRLS), which is a fairly documented algorithm. For each iteration, there is a call to a Fortran function to solve the weighted least squares problem.

From the end-user's viewpoint, for a logistic regression for instance, a call in R looks just like this:

``````y <- rbinom(100, 1, 0.5)
x <- rnorm(100)
glm(y~x, family=binomial)\$coefficients
``````

And if you do not want to use an intercept, either of these calls is okay:

``````glm(y~x-1, family=binomial)\$coefficients
glm(y~x+0, family=binomial)\$coefficients
``````

However, I cannot manage to understand how the formula, i.e. `y~x` or `y~x-1`, is making sense in the code and being understood as for whether to use an intercept or not. I was looking for a part of the code where a column of ones would be bound to `x`, but it seems there is none.

Thanks.

PS: As far as I have read, the boolean intercept which appears in the function called `glm.fit` is not the same as the intercept which I am referring to. And it is the same for the offset.

The documentation about `glm` and `glm.fit` is here.

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You are probably looking in the wrong place. Usually, `model.matrix()` is called first in the fitting functions:

``````> D <- data.frame(x1=1:4, x2=4:1)
> model.matrix(~ x1 + x2, D)
(Intercept) x1 x2
1           1  1  4
2           1  2  3
3           1  3  2
4           1  4  1
attr(,"assign")
[1] 0 1 2
> model.matrix(~ x1 + x2 -1 , D)
x1 x2
1  1  4
2  2  3
3  3  2
4  4  1
attr(,"assign")
[1] 1 2
>
``````

and it is the output of `model.matrix()` which is passed down to Fortran. That is the case for `lm()` and other model fitters.

For `glm()`, it is different and only `model.frame()` is called which does not add an intercept column. Why that is so has to do with the difference between generalized linear models and standard linear models and beyond the scope of this posting.

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is the last paragraph of this answer actually correct? `glm.fit` takes a model matrix `x` which is exactly the same as in `lm.fit` ... –  Ben Bolker Jun 18 '14 at 18:35
It's been a few years since I answered that but I seem to recall looking that up in the code. I could of course be wrong on any aspect of it... –  Dirk Eddelbuettel Jun 18 '14 at 18:54