Linear Regression in R with variable number of explanatory variables [duplicate]

I have a vector of Y values and a matrix of X values that I want to perform a multiple regression on (i.e. Y = X[column 1] + X[column 2] + ... X[column N])

The problem is that the number of columns in my matrix (N) is not prespecified. I know in R, to perform a linear regression you have to specify the equation:

``````fit = lm(Y~X[,1]+X[,2]+X[,3])
``````

But how do I do this if I don't know how many columns are in my X matrix?

Thanks!

-
I was able to find several questions similar to yours by searching for `[r] formula`. –  Joshua Ulrich Nov 16 '11 at 19:40

marked as duplicate by Joshua Ulrich, Ari B. Friedman, Ben Bolker, csgillespie, hadleyNov 16 '11 at 22:39

Three ways, in increasing level of flexibility.

Method 1

Run your regression using the formula notation:

``````fit <- lm( Y ~ . , data=dat )
``````

Method 2

Put all your data in one data.frame, not two:

``````dat <- cbind(data.frame(Y=Y),as.data.frame(X))
``````

Then run your regression using the formula notation:

``````fit <- lm( Y~. , data=dat )
``````

Method 3

Another way is to build the formula yourself:

``````model1.form.text <- paste("Y ~",paste(xvars,collapse=" + "),collapse=" ")
model1.form <- as.formula( model1.form.text )
model1 <- lm( model1.form, data=dat )
``````

In this example, xvars is a character vector containing the names of the variables you want to use.

-