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Function lm(...) returns an object of class 'lm'. How do I create an array of such objects? I want to do the following:

my_lm_array <- rep(as.lm(NULL), 20)
#### next, populate this array by running lm() repeatedly:
for(i in 1:20) {
   my_lm_array[i] <- lm(my_data$results ~ my_data[i,])
}

Obviously the line "my_lm <- rep(as.lm(NULL), 20)" does not work. I'm trying to create an array of objects of type 'lm'. How do I do that?

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1  
Is it really my_data[i,] in your lm call, not my_data[,i] ? –  juba Feb 13 '13 at 20:31
    
Since you obviously are talking about a single dimensioned object (really a non-dimensioned one in fact) then you should avoid using the word "array" which as a specific meaning in R syntax. –  BondedDust Feb 13 '13 at 21:05
    
Yes, I think you're right (I'm still relatively new with R). –  user2069819 Feb 13 '13 at 22:39

2 Answers 2

Not sure it will answer your question, but if what you want to do is run a series of lm from a variable against different columns of a data frame, you can do something like this :

data <- data.frame(result=rnorm(10), v1=rnorm(10), v2=rnorm(10))
my_lms <- lapply(data[,c("v1","v2")], function(v) {
  lm(data$result ~ v)
})

Then, my_lms would be a list of elements of class lm.

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I see what this is doing. Let me try it. Thanks –  user2069819 Feb 13 '13 at 22:39

Well, you can create an array of empty/meaningless lm objects as follows:

z <- NA
class(z) <- "lm"
lm_array <- replicate(20,z,simplify=FALSE)

but that's probably not the best way to solve the problem. You could just create an empty list of the appropriate length (vector("list",20)) and fill in the elements as you go along: R is weakly enough typed that it won't mind you replacing NULL values with lm objects. More idiomatically, though, you can run lapply on your list of predictor names:

my_data <- data.frame(result=rnorm(10), v1=rnorm(10), v2=rnorm(10))
prednames <- setdiff(names(my_data),"result")  ## extract predictor names
lapply(prednames,
 function(n) lm(reformulate(n,response="result"),
                 data=my_data))

Or, if you don't feel like creating an anonymous function, you can first generate a list of formulae (using lapply) and then run lm on them:

formList <- lapply(prednames,reformulate,response="result") ## create formulae
lapply(formList,lm,data=my_data)  ## run lm() on each formula in turn

will create the same list of lm objects as the first strategy above.

In general it is good practice to avoid using syntax such as my_data$result inside modeling formulae; instead, try to set things up so that all the variables in the model are drawn from inside the data object. That way methods like predict and update are more likely to work correctly ...

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