lm() linear model - attributes

So I get a bit confused by the lm()-command. I tried it with lm(x~y, mydata) and lm(y~x, mydata) and I got different output. So is that just which variable to use as x and which one to use as y? I'm sorry to ask such a noob question but I am not sure and I coulnd't find anything explaining the parameters of that command!

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You're right that they are different. The choice of whether to model x on y (x~y) or y on x (y~x) is a statistical one, not a programming question. What is your data? – David Robinson Sep 13 '12 at 19:41
When you do not know how to use a function in R use ? to get help on the function. For instance ?lm shows the lm help page. Other useful commands are ?? which looks for a term in the help (e.g. ??regression) and RSiteSearch("something") – nico Sep 13 '12 at 19:47

The answers can be found on the help page for the function. In the Details section we have:

A typical model has the form response ~ terms where response is the (numeric) response vector and terms is a series of terms which specifies a linear predictor for response.

There are more details (also linked to from the lm help page to formula. In the details sections for formula, we have:

The ~ operator is basic in the formation of such models. An expression of the form y ~ model is interpreted as a specification that the response y is modelled by a linear predictor specified symbolically by model.

So to summarize, you define your model in symbolic terms where the LHS is your response variable, and the RHS are your predictor variable(s). You get different answers because in one model, y is your response variable and the other is x.

If you weren't aware, you can access the help page for nearly all functions with ? at the command line, i.e. ?lm or ?formula.

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See also Section 11.1: Defining statistical models; formulae in an Introduction to R. – Josh O'Brien Sep 13 '12 at 19:45
great! thanks to everyone! didn't know how to get help in R for a particular command! that helps also a lot!! – cups Sep 13 '12 at 20:35
@cups - also check out rseek.org for another good resource. R can certainly have a steep initial learning curve, but you'll pick it up quickly! – Chase Sep 13 '12 at 21:03