I am having an hard time in getting the model estimated by the R package `lars`

for my data.

For example I create a fake dataset x and corresponding values y like this:

```
x = cbind(runif(100),rnorm(100))
colnames(x) = c("a","b")
y = 0.5 + 3 * x[,1,drop = FALSE]
```

Next I train a model that uses lasso regularization using the lars function:

```
m = lars(x,y,type = "lasso", normalize = FALSE, intercept = TRUE)
```

Now I would like to know what is the estimated model (`that I know to be: y = 0.5 + 3 * x[,1] + 0 * x[,2]`

)

I am only interested in the coefficients obtained in the last step:

```
cf = predict(m, x, s=1, mode = "fraction", type = "coef")$coef
cf
a b
3 0
```

These are the coefficients that I expect, but I can't find a way to get the intercept (`0.5`

) from `m`

.

I have tried to check the code of `predict.lars`

, where the fit is done as such:

```
fit = drop(scale(newx,
object$meanx, FALSE) %*% t(newbetas)) + object$mu)
```

I can see that the variables are scaled, and that the mean of `y`

(object$mu) is used, but I can't find an easy way to obtain the value of the intercept I am looking for. How can I get that?

`x`

with`cbind(1,x)`

to add a column of ones and use the option`intercept=FALSE`

. – Stéphane Laurent Aug 14 at 16:06