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This question already has an answer here:

It may be a basic question, but I could not seem to find a solution anywhere. If we have a data frame with 100 factors (call them a1 to a100), how could a linear model be entered in R? I understand you could write

lm(y~ a1*...*a100)

but if the names are long, it would take a long time to write them all out. Is there a faster way? For example, by referencing columns or something similar? Somewhat related, if I get a data table with a column name that involves parentheses (e.g. y-max()), how could I enter that? It reads as a function in R, but it is not.

I apologize if this has already been asked, but I could not seem to find an answer.

Thank you all in advance


Thank you for the answers. However, if I did want higher-order interaction terms, how would I accomplish that? Would I need to write a script or is there a smarter way?

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marked as duplicate by Dason, Ben Bolker, thelatemail, Praveen, Aaron Dec 11 '13 at 4:29

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

just checking: you don't really want all higher-order interactions among 100 predictors, do you [that's what the formula syntax you wrote above technically means]? That would correspond to a model with 2^100 terms ... If you want an additive model of all those terms (less crazy), see the linked question above. – Ben Bolker Dec 11 '13 at 3:32
for y-max(), you should use backticks `y-max()` – Ben Bolker Dec 11 '13 at 3:54

if you want to include all others y~. is enough, but if you want some selected vars, lets say, var 2 to 50, 52-100. you can do something like this?

vars<-names(df)[c(2:50,52:101)] #or whatever..
covs<-paste(vars, collapse="+")
df.lm<-lm(as.formula(model), data=df)
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Many of these things should be possible to figure out by reading the Introduction to R manual that comes with R when you download it.

Generally, a factor with many levels is stored as a single variable:

treat <- c("control", "placebo", "placebo", "control", "drugA", "control", 
           "drugB", ...)

If so, you can just use lm(y~treat), and R will handle this for you. On the other hand, if you have a data frame with y and a1 through a100 only, then you can use lm(y~., my.data), and R will take care of that for you also.

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