Yes, but I wouldn't really recommend it:

```
> set.seed(2)
> mat <- matrix(runif(12), ncol = 3, byrow = TRUE)
> mat
[,1] [,2] [,3]
[1,] 0.1848823 0.7023740 0.5733263
[2,] 0.1680519 0.9438393 0.9434750
[3,] 0.1291590 0.8334488 0.4680185
[4,] 0.5499837 0.5526741 0.2388948
> mod <- lm(mat[,1] ~ mat[,-1])
> mod
Call:
lm(formula = mat[, 1] ~ mat[, -1])
Coefficients:
(Intercept) mat[, -1]1 mat[, -1]2
1.0578 -1.1413 0.1177
```

Why is this not recommended? Well, you are abusing the formula interface here; it works but the model coefficients have odd names and you are incurring a lot of overhead of working with the formula interface, which is designed for extracting response/covariates from a data frame or list object referenced in the symbolic formula.

The usual way of working is:

```
df <- data.frame(mat)
names(df) <- c("Y","A","B")
## specify all terms:
lm(Y ~ A + B, data = df)
## or use the `.` shortcut
lm(Y ~ ., data = df)
```

If you don't want to go via the data frame, then you can call the workhorse function behind `lm()`

, `lm.fit()`

, directly with a simple manipulation:

```
lm.fit(cbind(rep(1, nrow(mat)), mat[,-1]), mat[, 1])
```

here we bind on a vector of 1s to columns 2 and 3 of `mat`

(`cbind(rep(1, nrow(mat)), mat[,-1])`

); this is the model matrix. `mat[, 1]`

is the response. Whilst it doesn't return an `"lm"`

classed object, it will be very quick and can relatively easily be converted to one if that matters.

By the way, you have the usual notation back to front. Y is usually the response, with X indicating the covariates used to model or predict Y.