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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


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$drop.unused.levels <- TRUE
    mf[[1L]] <- as.name("model.frame")
    mf <- eval(mf, parent.frame())
    if (method == "model.frame") 
    else if (method != "qr") 
        warning(gettextf("method = '%s' is not supported. Using 'qr'", 
            method), domain = NA)
    mt <- attr(mf, "terms")
    y <- model.response(mf, "numeric")
    w <- as.vector(model.weights(mf))
    if (!is.null(w) && !is.numeric(w)) 
        stop("'weights' must be a numeric vector")
    offset <- as.vector(model.offset(mf))
    if (!is.null(offset)) {
        if (length(offset) != NROW(y)) 
            stop(gettextf("number of offsets is %d, should equal %d (number of observations)", 
                length(offset), NROW(y)), domain = NA)
    if (is.empty.model(mt)) {
        x <- NULL
        z <- list(coefficients = if (is.matrix(y)) matrix(, 0, 
            3) else numeric(), residuals = y, fitted.values = 0 * 
            y, weights = w, rank = 0L, df.residual = if (!is.null(w)) sum(w != 
            0) else if (is.matrix(y)) nrow(y) else length(y))
        if (!is.null(offset)) {
            z$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
share|improve this question
Do you only have the formula or do you have a fitted model or written code that uses the standard non-standard evaluation rules for these formula interfaces? R uses the terms component for this sort of think ususally –  Gavin Simpson Nov 4 '12 at 9:23
@Gavin No. I have a formula before calculating 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
OK, and I just remembered that 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
Re you edit; that was what I was getting at. 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
See this document (PDF) which explains what is done in lm() –  Gavin Simpson Nov 4 '12 at 10:51

5 Answers 5

up vote 12 down vote accepted

Try using all.vars:

share|improve this answer
Thank you. Are you sure that the dependent variable will always be in the first position in the vector all.vars(myformula)? –  Adam Ryczkowski Nov 4 '12 at 9:41
You'd have to study the C code to determine that. The order is not documented to the best of my knowledge. –  Gavin Simpson Nov 4 '12 at 9:45
+1 No more "hacky" than as.character(formula)[[2]] and probably the most reliable without resorting to other, more lengthy manipulations. –  Gavin Simpson Nov 4 '12 at 11:03
This variant does not depend on the order in which all.vars variables are returned: all.vars(update(myformula, . ~ 1)) . –  G. Grothendieck Nov 4 '12 at 12:18
No need for updating the formula: all.vars(myformula[[2]]) works just fine. –  Roland Nov 4 '12 at 13:43

I suppose you could also cook your own function to work with terms():

getResponse <- function(formula) {
    tt <- terms(formula)
    vars <- as.character(attr(tt, "variables"))[-1] ## [1] is the list call
    response <- attr(tt, "response") # index of response var

R> myformula <- formula("depVar ~ Var1 + Var2")
R> getResponse(myformula)
[1] "depVar"

It is just as hacky as as.character(myformyula)[[2]] but you have the assurance that you get the correct variable as the ordering of the call parse tree isn't going to change any time soon.

This isn't so good with multiple dependent variables:

R> myformula <- formula("depVar1 + depVar2 ~ Var1 + Var2")
R> getResponse(myformula)
[1] "depVar1 + depVar2"

as they'll need further processing.

share|improve this answer

I found an useful package 'formula.tools' which is suitable for your task.

code Example:

f <- as.formula(a1 + a2~a3 + a4)

lhs.vars(f) #get dependent variables

[1] "a1" "a2"

rhs.vars(f) #get independent variables

[1] "a3" "a4"

share|improve this answer

Based on your edit to get the actual response, not just its name, we can use the nonstandard evaluation idiom employed by lm() and most other modelling functions with a formula interface in base R

form <- formula("depVar ~ Var1 + Var2")
dat <- data.frame(depVar = rnorm(10), Var1 = rnorm(10), Var2 = rnorm(10))

getResponse <- function(form, data) {
    mf <- match.call(expand.dots = FALSE)
    m <- match(c("formula", "data"), names(mf), 0L)
    mf <- mf[c(1L, m)]
    mf$drop.unused.levels <- TRUE
    mf[[1L]] <- as.name("model.frame")
    mf <- eval(mf, parent.frame())
    y <- model.response(mf, "numeric")

> getResponse(form, dat)
          1           2           3           4           5 
-0.02828573 -0.41157817  2.45489291  1.39035938 -0.31267835 
          6           7           8           9          10 
-0.39945771 -0.09141438  0.81826105  0.37448482 -0.55732976

As you see, this gets the actual response variable data from the supplied data frame.

How this works is that the function first captures the function call without expanding the ... argument as that contains things not needed for the evaluation of the data for the formula.

Next, the "formula" and "data" arguments are matched with the call. The line mf[c(1L, m)] selects the function name from the call (1L) and the locations of the two matched arguments. The drop.unused.levels argument of model.frame() is set to TRUE in the next line, and then the call is updated to switch the function name in the call from lm to model.frame. All the above code does is takes the call to lm() and processes that call into a call to the model.frame() function.

This modified call is then evaluated in the parent environment of the function - which in this case is the global environment.

The last line uses the model.response() extractor function to take the response variable from the model frame.

share|improve this answer
Thank you very much. I didn't know about the model.frame functionality. Although it offers a little different paradigm (need to supply the actual data.frame), I believe it should be the most versatile and trustworthy solution, especially when I only work with glm models. I feel I need to dig more into this idiom. And thank you for "nonstandard-eval.pdf". –  Adam Ryczkowski Nov 4 '12 at 16:42
Can you tell me, how approximately speed of this method compares with the other (little more "hacky") ones? - I believe I'll need to use this functionality inside a bootstrap loop so speed is also a concern for me. –  Adam Ryczkowski Nov 4 '12 at 16:43
Benchmark it yourself in your use-case. I doubt it will be quicker than than foo <- as.character(form)[[2]] followed by resp <- data[ , foo], but it is the way R Core have chosen to identify the data reliably for a model represented by a formula. Depending on what you are doing in your application, you might not need the extra formula functionality handling/generality that the model.frame idiom. –  Gavin Simpson Nov 4 '12 at 16:58

This should always give you all dependent vars:

myformula<-formula("depVar1 + depVar2 ~ Var1 + Var2")
#[1] "depVar1" "depVar2"

And I wouldn't consider this particularly "hacky".


Something strange happens with 3 dependents:

myformula<-formula("depVar1 + depVar2 + depVar3 ~ Var1 + Var2")
#[1] "+"                 "depVar1 + depVar2" "depVar3" 

So this might not be as reliable as I thought.


Okay, myformula[[2]] is a language object and as.character seems to do something similar as languageEl.

#[1] 3
#depVar1 + depVar2

If you check the length of each element, you could create your own extraction function. But this is probably too much of a hack.

Edit3: Based on the answer by @seancarmody all.vars(myformula[[2]]) is the way to go.

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