# Ordinary least squares regression in R: no intercepts

I'd like to use the `ols()` (ordinary least squares) function from the `rms` package to do a multivariate linear regression, but I would not like it to calculate the intercept. Using `lm()` the syntax would be like:

``````model <- lm(formula = z ~ 0 + x + y, data = myData)
``````

where the `0` stops it from calculating an intercept, and only two coefficients are returned, on for `x` and the other for `y`. How do I do this when using `ols()`? Trying

``````model <- ols(formula = z ~ 0 + x + y, data = myData)
``````

did not work, it still returns an intercept and a coefficient each for `x` and `y`.

Here is a link to a csv file

It has five columns. For this example, can only use the first three columns:

``````model <- ols(formula = CorrEn ~ intEn_anti_ncp + intEn_par_ncp, data = ccd)
``````

Thanks!

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did you try ols(formula = z ~ -1 + x + y, data = myData) –  droopy Apr 8 '14 at 6:39
@droopy That made no difference whatsoever...what was your idea? –  Samuel Tan Apr 8 '14 at 6:41
Can you give us a small, reproducible example to try this out? –  Roman Luštrik Apr 8 '14 at 7:11
It's a real pity there's no answer to this. I'm asking the same question right now –  lamecicle Dec 16 '14 at 11:29

`rms::ols` uses `rms:::Design` instead of `model.frame.default`. `Design` is called with the default of `intercept = 1`, so there is no (obvious) way to specify that there is no intercept. I assume there is a good reason for this, but you can try changing `ols` using `trace`.

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