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I am trying create model to predict "y" from data "D" that contain predictor x1 to x100 and other 200 variables . since all Xs are not stored consequently I can't call them by column.

I can't use ctree( y ~ , data = D) because other variables , Is there a way that I can refer them x1:100 ?? in the model ?

instead of writing a very long code

ctree( y = x1 + x2 + x..... x100) 

Some recommendation would be appreciated.

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3 Answers 3

up vote 3 down vote accepted

Construct your formula as a text string, and convert it with as.formula.

vars <- names(D)[1:100] # or wherever your desired predictors are
fm <- paste("y ~", paste(vars, collapse="+"))
fm <- as.formula(fm)

ctree(fm, data=D, ...)
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Two more. The simplest in my mind is to subset the data:

ctree(y ~ ., data = D[, c("y", paste0("x", 1:100))]

Or a more functional approach to building dynamic formulas:

ctree(reformulate(paste0("x", 1:100), "y"), data = D)
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+1 for reformulate –  Ben Bolker Jun 27 '13 at 21:20

You can use this:

fml = as.formula(paste("y", paste0("x", 1:100, collapse=" + "), sep=" ~ "))
ctree(fmla)
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