Let's say I have the following formula:

```
myformula<-formula("depVar ~ Var1 + Var2")
```

How to reliably get dependent variable name from formula object?

I failed to find any built-in function that serves this purpose.
I know that `as.character(myformula)[[2]]`

works, as do

```
sub("^(\\w*)\\s~\\s.*$","\\1",deparse(myform))
```

It just seems to me, that these methods are more a hackery, than a reliable and standard method to do it.

Does anyone know perchance what exactly method the e.g. `lm`

use? I've seen it's code, but it is a little to cryptic to me... here is a quote for your convenience:

```
> lm
function (formula, data, subset, weights, na.action, method = "qr",
model = TRUE, x = FALSE, y = FALSE, qr = TRUE, singular.ok = TRUE,
contrasts = NULL, offset, ...)
{
ret.x <- x
ret.y <- y
cl <- match.call()
mf <- match.call(expand.dots = FALSE)
m <- match(c("formula", "data", "subset", "weights", "na.action",
"offset"), names(mf), 0L)
mf <- mf[c(1L, m)]
mf$drop.unused.levels <- TRUE
mf[[1L]] <- as.name("model.frame")
mf <- eval(mf, parent.frame())
if (method == "model.frame")
return(mf)
else if (method != "qr")
warning(gettextf("method = '%s' is not supported. Using 'qr'",
method), domain = NA)
mt <- attr(mf, "terms")
y <- model.response(mf, "numeric")
w <- as.vector(model.weights(mf))
if (!is.null(w) && !is.numeric(w))
stop("'weights' must be a numeric vector")
offset <- as.vector(model.offset(mf))
if (!is.null(offset)) {
if (length(offset) != NROW(y))
stop(gettextf("number of offsets is %d, should equal %d (number of observations)",
length(offset), NROW(y)), domain = NA)
}
if (is.empty.model(mt)) {
x <- NULL
z <- list(coefficients = if (is.matrix(y)) matrix(, 0,
3) else numeric(), residuals = y, fitted.values = 0 *
y, weights = w, rank = 0L, df.residual = if (!is.null(w)) sum(w !=
0) else if (is.matrix(y)) nrow(y) else length(y))
if (!is.null(offset)) {
z$fitted.values <- offset
z$residuals <- y - offset
}
}
else {
x <- model.matrix(mt, mf, contrasts)
z <- if (is.null(w))
lm.fit(x, y, offset = offset, singular.ok = singular.ok,
...)
else lm.wfit(x, y, w, offset = offset, singular.ok = singular.ok,
...)
}
class(z) <- c(if (is.matrix(y)) "mlm", "lm")
z$na.action <- attr(mf, "na.action")
z$offset <- offset
z$contrasts <- attr(x, "contrasts")
z$xlevels <- .getXlevels(mt, mf)
z$call <- cl
z$terms <- mt
if (model)
z$model <- mf
if (ret.x)
z$x <- x
if (ret.y)
z$y <- y
if (!qr)
z$qr <- NULL
z
}
```

`terms`

component for this sort of think ususally – Gavin Simpson Nov 4 '12 at 9:23beforecalculating the model. I'm writing a function for bootstrapping that will replace the dependent variable in data.frame with given residuals. The only place from where I can get the name of dep. variable is the formula object. It will be awful waste of time if I'd fit the model just to use the $terms component. – Adam Ryczkowski Nov 4 '12 at 9:38`terms()`

works on a formula too but dealing with that object will also be hacky and a pain. I think`as.character(myformula)[[2]]`

is the least hacky - the ordering won't change any time soon I would venture. – Gavin Simpson Nov 4 '12 at 9:54`lm`

uses the standard non-standard evaluation idiom to match a formula with a data frame object. You need a`data`

argument at least plus some other and then it is quite easy to get the model frame and from that the response. – Gavin Simpson Nov 4 '12 at 10:47`lm()`

– Gavin Simpson Nov 4 '12 at 10:51