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I tried to write a wrapper function to do likelihood ratio tests in batches. I tried to include update() to update the initial model. However, it seems that instead of looking for objects inside the function, it searches for objects in the global environment.

fake <- data.frame(subj= rep(1:5, 4), 
                   factor1 = rep(LETTERS[c(1,2,1,2)], each=5), 
                   factor2 = rep(letters[1:2], each=10), 
                   data=sort(rlnorm(20)))

foo <- function(){
                  temp <- fake
                  model1 <- lmer(data~factor1*factor2 + (1 |subj), temp)
                  model1a <- update(model1, ~.-factor1:factor2)
                  model1a}

And it gives an error message below:

Error in eval(expr, envir, enclos) : object 'factor1' not found

Is there anyway to make update() search within the function? Thank you!

EDIT:

I made a mistake. I wanted to pass "temp" to lmer, not "fake".

EDIT2: One convenient solution suggested is to simply specify the data object. Although update() now has no problem with this, anova() seems to think that the models I am trying to compare are based on different data objects

 foo <- function(){
                  temp <- fake
                  model1 <- lmer(data~factor1*factor2 + (1 |subj), data=temp)
                  model1a <- update(model1, ~.-factor1:factor2, data=temp)
                  anova(model1, model1a)
            }
 foo()

I get an error message:

 Error in anova(model1, model1b) : 
   all models must be fit to the same data object

I suppose this error goes beyond update(). But I wonder if anyone knows how this can be resolved. Note that if I write the function without using update() and instead spell out the models (see below), the error above goes away:

 foo <- function(){
                  temp <- fake
                  model1 <- lmer(data~factor1*factor2 + (1 |subj), data=temp)
                  model1a <- lmer(data~factor1 + factor2 + (1 |subj), data=temp)
                  anova(model1, model1a)
            }
 foo()

 Data: temp
 Models:
 model1a: data ~ factor1 + factor2 + (1 | subj)
 model1: data ~ factor1 * factor2 + (1 | subj)
         Df     AIC    BIC  logLik  Chisq Chi Df Pr(>Chisq)  
 model1a  5 -4.6909 3.7535  7.3454                           
 model1   6 -8.8005 1.3327 10.4003 6.1097      1    0.01344 *
 ---
 Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 

EDIT 3: It seems that the issue is with anova(). I also tried the suggestion by @hadley

foo2 <- function(){
  my_update <- function(mod, formula = NULL, data = NULL) {
  call <- getCall(mod)
  if (is.null(call)) {
    stop("Model object does not support updating (no call)", call. = FALSE)
  }
  term <- terms(mod)
  if (is.null(term)) {
    stop("Model object does not support updating (no terms)", call. = FALSE)
  }
  if (!is.null(data)) call$data <- data
  if (!is.null(formula)) call$formula <- update.formula(call$formula, formula)
  env <- attr(term, ".Environment")
  eval(call, env, parent.frame())}

      model1 <- lmer(data~factor1*factor2 + (1 |subj), temp)
      model1a <- my_update(model1, ~.-factor1:factor2)
      anova(model1, model1a)
 }
 foo2()

I got an error message as shown below:

 Error in as.data.frame.default(data) : 
   cannot coerce class 'structure("mer", package = "lme4")' into a data.frame
share|improve this question
    
works for me with no error in R 2.15.1, aside from needing to load lme4 package –  MattBagg Dec 3 '12 at 20:09
    
Did you want to pass temp to lmer instead of fake? –  BenBarnes Dec 3 '12 at 20:16
    
Sorry, Yes, i wanted to pass temp to lmer, not fake –  Alex Dec 3 '12 at 22:32
    
for what it's worth, this fails for me with the CRAN (stable) version of lme4 (with object 'temp' not found), but succeeds with the development version (on github: github.com/lme4/lme4 ). There are some issues with stability of GLMMs in the development version, but otherwise as far as I know the development version dominates the stable version in terms of functions and robustness ... –  Ben Bolker Dec 3 '12 at 22:40
    
Checking in on edit -- for what it's worth, the anova() example also seems to work with development lme4. –  Ben Bolker Dec 4 '12 at 21:23

2 Answers 2

up vote 6 down vote accepted

I've been bitten by this behaviour before too, so I wrote my own version of update. It evaluates everything in the environment of the formula, so it should be fairly robust.

my_update <- function(mod, formula = NULL, data = NULL) {
  call <- getCall(mod)
  if (is.null(call)) {
    stop("Model object does not support updating (no call)", call. = FALSE)
  }
  term <- terms(mod)
  if (is.null(term)) {
    stop("Model object does not support updating (no terms)", call. = FALSE)
  }

  if (!is.null(data)) call$data <- data
  if (!is.null(formula)) call$formula <- update.formula(call$formula, formula)
  env <- attr(term, ".Environment")

  eval(call, env, parent.frame())
}

library(nlme4)

fake <- data.frame(
  subj = rep(1:5, 4), 
  factor1 = rep(LETTERS[c(1,2,1,2)], each = 5), 
  factor2 = rep(letters[1:2], each = 10), 
  data = sort(rlnorm(20)))

foo <- function() {
  temp <- fake
  model1 <- lmer(data ~ factor1 * factor2 + (1 | subj), fake)
  model1a <- my_update(model1, ~ . - factor1:factor2)
  model1a
}
foo()
share|improve this answer
    
It seems that the problem now is with anova(). i tried your method, which works perfectly fine with model updating. However, when I tried using anova(), it gave me an error message as shown in EDIT 3 of my original post. Thank you for your help! –  Alex Dec 4 '12 at 16:37
    
@AlexH., Hadley's answer is the way to go here. It passes the formula and data components in a way that will work with anova. In your foo2 function above, you neglected to create the object temp, which, when added, worked for me. –  BenBarnes Dec 4 '12 at 19:53

Although I really like @Hadley's answer (and will likely use that function myself), you can also specify a data argument in the update function. (Here, I assumed you wanted to pass temp to your models.)

model1a <- update(model1, ~.-factor1:factor2, data = temp)

EDIT

If you're looking to compare models with anova, update will mung up the name of the data argument and "trick" anova into believing that the two models were fit using two different datasets. Updating only the formula and creating a new model will avoid this:

foo <- function(){
                  temp <- fake
                  model1 <- lmer(data~factor1*factor2 + (1 |subj), data=temp)
                  newForm <- update.formula(formula(model1), ~.-factor1:factor2)
                  model1a <- lmer(newForm, data=temp)
                  anova(model1, model1a)
            }
share|improve this answer
    
but ... I think this actually doesn't work with stable lme4 (I agree that it should) ... ? –  Ben Bolker Dec 3 '12 at 22:45
    
@BenBolker, Interesting issue. Before posting, I successfully tested the answer using R 2.15.2 on OSX with (I'm pretty sure) the regular CRAN Mac binary version of lme4. It also works with R 2.15.2 on WinXP using lme4_0.999999-0 and Matrix_1.0-9. –  BenBarnes Dec 4 '12 at 6:32
    
Sorry, I misunderstood what you were doing. –  Ben Bolker Dec 4 '12 at 13:36
    
It seems that anova() treats objects updated using update() as based on different datasets (see the example I added in my original post). Do you happen to a way to get around the issue? Thanks! –  Alex Dec 4 '12 at 15:57

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