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.