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I've got a data frame containing a vector of x values, a vector of y values, and a vector of IDs:

x <- rep(0:3, 3)
y <- runif(12)
ID <- c(rep("a", 4), rep("b", 4), rep("c", 4))
df <- data.frame(ID=ID, x=x, y=y)

I'd like to create a separate lm for the subset of x's and y's sharing the same ID. The following code gets the job done:

a.lm <- lm(x~y, data=subset(df, ID=="a"))
b.lm <- lm(x~y, data=subset(df, ID=="b"))
c.lm <- lm(x~y, data=subset(df, ID=="c"))

Except that this is very brittle (future data sets might have different IDs) and un-vectorized. I'd also like to store all the lms in a single data structure. There must be an elegant way to do this, but I can't find it. Any help?

share|improve this question
    
You could use rep like this: rep(c("a","b","c"),each=4). And you could create data.frame without polluting global environment by df<-data.frame( ID=rep(c("a","b","c"),each=4), x=rep(0:3,3), y=runif(12)) –  Marek Sep 14 '11 at 14:47
    
save 2 more characters by substituting letters[1:3] for c("a","b","c")) –  Ben Bolker Sep 14 '11 at 16:14
    
@Ben Or with Hmisc: Cs(a,b,c). –  Marek Sep 14 '11 at 21:26

3 Answers 3

up vote 7 down vote accepted

How about

library(nlme) ## OR library(lme4)
lmList(x~y|ID,data=d)

?

share|improve this answer
    
That works nicely. –  Drew Steen Sep 14 '11 at 12:39

Use some of the magic in the plyr package. The function dlply takes a data.frame, splits it, applies a function to each element, and combines it into a list. This is perfect for your application.

library(plyr)
#fitList <- dlply(df, .(ID), function(dat)lm(x~y, data=dat))
fitList <- dlply(df, .(ID), lm, formula=x~y) # Edit

This creates a list with a model for each subset of ID:

str(fitList, max.level=1)

List of 3
 $ a:List of 12
  ..- attr(*, "class")= chr "lm"
 $ b:List of 12
  ..- attr(*, "class")= chr "lm"
 $ c:List of 12
  ..- attr(*, "class")= chr "lm"
 - attr(*, "split_type")= chr "data.frame"
 - attr(*, "split_labels")='data.frame':    3 obs. of  1 variable:

This means you can subset the list and work with that. For example, to get the coefficients for your lm model where ID=="a":

> coef(fitList$a)
(Intercept)           y 
   3.071854   -3.440928 
share|improve this answer
    
This works great, but can you help me understand what dat is? I don't get how data=dat doesn't throw an object not found error, since I have not defined it, nor what the syntax function(dat) means. The plyr documentation just passes a function name with no arguments. Clearly I'm missing something. –  Drew Steen Sep 14 '11 at 12:27
1  
I am defining an anonymous function inside the dlply call, with a single argument, i.e dat. This means that inside the anonymous function I can refer to dat. The effect is that data=dat means that each time the function gets called (i.e. for each ID) data is assigned the current subset that matches ID). The more common usage is function(x) but since x is already the name of a column, this would have been confusing. –  Andrie Sep 14 '11 at 12:47
    
I get it, thanks. –  Drew Steen Sep 14 '11 at 12:50
    
wouldn't fitList <- dlply(df, .(ID), lm, formula=x~y) work? –  Ben Bolker Sep 14 '11 at 13:22
    
@BenBolker You're right. This works, and is simpler. I guess I fell into a habit of always using anonymous functions rather than the simpler idiom of passing additional arguments directly. Answer edited to reflect this. –  Andrie Sep 14 '11 at 13:32

Using base functions, you can split your original dataframe and use lapply on that:

lapply(split(df,df$ID),function(d) lm(x~y,d))
$a

Call:
lm(formula = x ~ y, data = d)

Coefficients:
(Intercept)            y  
    -0.2334       2.8813  


$b

Call:
lm(formula = x ~ y, data = d)

Coefficients:
(Intercept)            y  
     0.7558       1.8279  


$c

Call:
lm(formula = x ~ y, data = d)

Coefficients:
(Intercept)            y  
      3.451       -7.628  
share|improve this answer
1  
This should be split(df,df$ID). It works that way because ID is define in global environment. –  Marek Sep 14 '11 at 14:41
1  
And handy syntax kung-fu: lapply(split(df, df$ID), lm, formula=x~y). –  Marek Sep 14 '11 at 14:43
    
@Marek Good catch on the ID issue –  James Sep 14 '11 at 15:43

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