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I have one response variable, and I'm trying to find a way of fitting a multiple linear regression model using 1664 different explanatory variables. I'm quite new to R and was taught the way of doing this by stating the formula using each of the explanatory variables in the formula. However as I have 1664 variables, it would take too long to do. Is there a quicker way of doing this?

Thank you!

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I'm not sure I know what you mean, but I might write a script to generate the code for me or put them into an array and loop over it. –  duffymo Nov 3 '13 at 14:26
do you just mean lm(response~.,data=your_data) ? This is a shortcut that is commented on elsewhere on SO. –  Ben Bolker Nov 3 '13 at 14:51
That creates a linear model with 1664 explanatory variables, I guess that R^2 is pretty close to 1 ;). –  Paul Hiemstra Nov 3 '13 at 15:06

2 Answers 2

up vote 3 down vote accepted

I think you want to select from the 1664 variables a valid model, i.e. a model that predicts as much of the variability in the data with as few explanatory variables. There are several ways of doing this:

  • Using expert knowledge to select variables that are known to be relevant. This can be due to other studies finding this, or due to some underlying process that you now makes that variable relevant.
  • Using some kind of stepwise regression approach which selects the variables are relevant based on how well they explain the data. Do note that this method has some serious downsides. Have a look at stepAIC for a way of doing this using the Aikaike Information Criterium.

Correlating 1664 variables with data will yield around 83 significant correlations if you choose a 95% significance level (0.05 * 1664) purely based on randomness. So, tread carefully with the automatic variable selection. Cutting down the amount of variables with expert knowledge or some decorrelation techniques (e.g. principal component analysis) would help.

For a code example, you first need to include an example of your own (data + code) on which I can build.

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What about Lasso/Ridge/Elastic Net? But we're really in CrossValidated territory here.... –  Ari B. Friedman Nov 3 '13 at 15:20
+1 for @AriB.Friedman's comment: see the glmnet package. –  Ben Bolker Nov 3 '13 at 15:38
The problem is that I don't know for sure which variables are relevant. The purpose of this is to basically reduce the variables that are relevant to begin with to show that they have some form of significance to the response variable. I will howver try and do the stepwise regression approach first however and see what I get before doing linear regression, thanks! –  user2062207 Nov 3 '13 at 21:07

I'll answer the programming question, but note that often a regression with that many variables could use some sort of variable selection procedure (e.g. @PaulHiemstra's suggestions).

  1. You can construct a data.frame with only the variables you want to run, then use the formula shortcut: form <- y ~ ., where the dot indicates all variables not yet mentioned.
  2. You could instead construct the formula manually. For instance: form <- as.formula( paste( "y ~", paste(myVars,sep="+") ) )

Then run your regression:

lm( form, data=dat )
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Thank you so much, really appreciate the help! –  user2062207 Nov 3 '13 at 21:07

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