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I would like to automate a simple multiple regression for the subsets defined by the unique combinations of the grouping variables. I have a dataframe with several grouping variables df1[,1:6] and some independent variables df1[,8:10] and a response df1[,7].

This is an excerpt from the data.

structure(list(Surface = structure(c(1L, 1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L), .Label = c("NiAu", "Sn"), class = "factor"), Supplier = structure(c(1L, 1L, 1L, 2L, 2L, 1L, 1L, 2L, 2L, 2L, 2L), .Label = c("A", "B"), class = "factor"), ParticleSize = structure(c(1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L), .Label = c("3", "5"), class = "factor"), T1 = structure(c(2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 1L, 1L), .Label = c("130", "144"), class = "factor"), T2 = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L), .Label = "200", class = "factor"), O2 = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L), .Label = "1300", class = "factor"), Shear = c(56.83, 67.73, 78.51, 62.61, 66.78, 60.89, 62.94, 76.34, 70.56, 70.4, 54.15), Gap = c(373, 450, 417, 450, 406, 439, 439, 417, 439, 441, 417), Clearance = c(500.13, 509.85, 495.97, 499.55, 502.66, 505.33, 500.32, 503.28, 507.44, 500.5, 498.39), Void = c(316, 343, 89, 247, 271, 326, 304, 282, 437, 243, 116)), .Names = c("Surface", "Supplier", "ParticleSize","T1", "T2", "O2", "Shear", "Gap", "Clearance", "Void"), class = "data.frame", row.names = c(NA, -11L))

Using unique(df1[,1:6]) returns 5 factor combinations of the grouping variables. So there should be 5 subsets where I apply the lm() function to. My call looks like that

df1.fit.by<-with(df1,by(df1,df1[,1:6], function(x) lm(Shear~Gap+Clearance+Void,data=x)))

Problem 1: it returns a list with 16 list entries. Apparently, it calculates all possible factor combinations of the first six grouping variables. (V5+V6 only have on level but V1:4 have two levels level in the excerpt. Resulting in 2^4=16) But it should only use the real existing factor combinations in the data. So I suppose by() is not the correct function to achieve that. Any suggestions?
Problem 2: I find it easier to refer to column indices rather than variable names. So I was initially trying to use my lm() function in the way lm(df1[,7]~df1[,8]+df1[,9]). That did not work out. Because I always access the entire df1 dataframe instead of the subsets. So probably I should pass the row indeces for the factor combinations to the lm()function rather than a complete dataframe.

I think the solution to problem 1 and 2 are somehow related and solved using another subset function. It would be nice if someone can try to explain where my mistake is. If its possible I would stick to the standard packages simply because I want to improve my understanding of R. Thanks

EDIT: a minor mistake in the variable assignment

share|improve this question
Possible duplicate: stackoverflow.com/q/7414638/269476 –  James Feb 1 '12 at 16:37
Thanks I havent found that post. It looks it explains some good strategies. Thank you. and sorry for the duplicate post. –  Sebastian Feb 1 '12 at 18:24

1 Answer 1

up vote 4 down vote accepted

You could use the plyr package:

list_reg <- dlply(df1, .(Surface, Supplier, ParticleSize, T1, T2), function(df) 
#We have indeed five different results
#That's how you check out one particular regression, in this case the first

The function dlply takes a data.frame (that's what the d... stands for), in your case df1, and returns a list (that's what the .l... stands for), in your case consisting of five elements, each containing the results of one regression.

Internally, your df1 is split up into five sub-data.frames according to the columns specified by .(Surface, Supplier, ParticleSize, T1, T2) and the function lm(Shear~Gap+Clearance+Void,data=df) is applied to every of these sub-data.frames.

To get a better feeling of what dlply really does, just call

list_sub_df <- dlply(df1, .(Surface, Supplier, ParticleSize, T1, T2))

and you can look at each sub-data.frame on which the lm will be applied to.

And just a general note at the end: The paper by the package author Hadley Wickham is really great: even if you won't end up using his package, it is still really good to get a feeling about the split-apply-combine approach.


I just did a quick search and as expected, this was already explained better before, so also make sure to read this SO post.


If you want to use the column numbers directly, try this (taken from this SO post):

 list_reg <- dlply(df1, names(df1[, 1:5]), function(df) 
share|improve this answer
Thanks Christoph. I know plyr from the name. Its quite a bit text to read through. However, I am sure your solution works exactly as I want it to be. I am still wondering if there is a way to avoid to name the variables but to use the bracket notation. –  Sebastian Feb 1 '12 at 18:31
@Sebastian: I updated my answer, is this what you want? –  Christoph_J Feb 2 '12 at 8:41
Thanks christoph, actually I was pointing on the formula expression: Shear~Gap+Clearance+Void I used to do simple regression with lm(df[,7]~df[,8]+df[,9]) which is not working when I vectorize the problem. But you gave me a good hint with the names function. That should word in the formula as well –  Sebastian Feb 2 '12 at 8:56

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