I fit models like so

groupedTrainingSet = group_by(trainingSet, geo);
models = do(groupedTrainingSet, mod = lm(revenue ~ julian, data=.))

grouptedTestSet = group_by(testSet, geo);
// TODO: apply model back to test set

Where models looks like

 geo     mod
1   APAC <S3:lm>
2  LATAM <S3:lm>
3     ME <S3:lm>
7    ROW <S3:lm>
4     WE <S3:lm>
5     NA <S3:lm>

I think I should be able to just apply 'do' again but I'm not seeing it...Alternatively I can do something along the lines of

apply(trainingData, fitted =
    predict(select(models, geo==geo)$mod, .));

But I'm not sure about the syntax there.


2 Answers 2


Here is a dplyr method of obtaining a similar answer, following the approach used by @Mike.Gahan :


iris.models <- iris %>%
  group_by(Species) %>%
  do(mod = lm(Sepal.Length ~ Sepal.Width, data = .))

iris %>% 
  tbl_df %>%
  left_join(iris.models) %>%
  rowwise %>%
  mutate(Sepal.Length_pred = predict(mod,
                                    newdata = list("Sepal.Width" = Sepal.Width)))

alternatively you can do it in one step if you create a predicting function:

m <- function(df) {
  mod <- lm(Sepal.Length ~ Sepal.Width, data = df)
  pred <- predict(mod,newdata = df["Sepal.Width"])

iris %>%
  group_by(Species) %>%
  • What's the point of the tbl_df command? I have looked at the documentation, but don't see how it applies. Jul 16, 2014 at 21:04
  • Doesn't make much difference in this case; it has become habit for me when using dplyr, because of its more convenient printing method. If that line is omitted, everything should work in the same way. Jul 17, 2014 at 18:19
  • I was about to ask for extension to your answer, but decided it should be its own question Jul 21, 2014 at 19:54
  • 1
    You have to be careful with the first approach, because you add a lm object to each row of your data frame. With the iris data, the resulting data frame has an object.size of 3731096 bytes. If you pipe select(-mod) after the last line, the resulting data frame only has 8576 bytes.
    – Jon Snow
    Mar 23, 2015 at 12:29

Not sure there is a question here, but I think the data.table package is especially efficient here.

#Load data.table package
iris <- data.table(iris)

#Make a model for each species group
iris.models <- iris[, list(Model = list(lm(Sepal.Length ~ Sepal.Width))),
                      keyby = Species]

#Make predictions on dataset
setkey(iris, Species)
iris[iris.models, prediction := predict(i.Model[[1]], .SD), by = .EACHI]

(for data.table version <= 1.9.2 omit the by = .EACHI part)

  • 1
    Note the issues raised stackoverflow.com/questions/15096811/… when using lm and .SD.
    – mnel
    Jun 24, 2014 at 0:46
  • Note that the same issue pointed in the link above also happens with dplyr - for the same reason mentioned there.
    – Arun
    Jun 24, 2014 at 13:44

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