# R - using regression functions within a group

Suppose I have a dataframe `df` with three variables `df\$x`, `df\$y`, `df\$z`, and there is a grouping variable `df\$g`.

Usually, to compute a function WITHIN each group, I do the following

``````df\$new<-unlist(tapply(df\$x,df\$g,FUN=myfunc))
``````

Now suppose I want to generate residuals from regression of `x` on `y` and `z` WITHIN each value of group `g`, how do I implement it?

More specifically, without using groups, I would have done

``````df\$new<-resid(lm(df\$x ~ df\$y + df\$z, na.action, na.exclude))
``````

One solution to carry out the previous operation WITHIN groups is to use a loop over unique elements of `df\$g', but it would be great if there is any vectorized solution.

-
did you check with `ddply` from plyr package? – Metrics Aug 4 '13 at 16:42
Check last example in `?by` – Henrik Aug 4 '13 at 16:55
This post may be of some help. – Arun Aug 4 '13 at 16:58

In `data.table` you can use `by`

``````library(data.table)
DT <- data.table(df)

DT[, new := resid(lm(x ~ y + z, na.action, na.exclude)), by = g]
``````
-
``````library(plyr)
ddply(mydata,.(g),transform, new=resid(lm(x ~ y + z, na.action, na.exclude)))
``````

Test using `mtcars` data:

``````mydata<-mtcars

myres<-ddply(mydata,.(carb),transform, new=resid(lm(mpg ~ disp + hp))) # g=carb, x=mpg,y=disp,z=hp