# How to write R formula for multivariate response?

In R I want to do some regression on multivariate response on all predictors, for univariate response, I know the formula is like

`y~.,` this is to use all predictors to regress y, what if now I face 100 response, I can not type 100 yi like `y1+y2+y3...+y4~x`, so how to use all predictors to regress multivariate response?

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This answer has an example. –  caracal May 29 '12 at 21:11

## migrated from stats.stackexchange.comAug 28 '12 at 14:35

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In R, the multivariate formula is to use `cbind()` for your `Y` variable. Thus, the formula would be:

``````model <- lm(cbind(y1, y2, y3, y4)~x)
``````
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That's relatively easy if `y` is a matrix with 100 columns. In that case you do it the same way. For example:
``````lm(y ~ x)
will do a linear regression of y onto the columns of `x`.
This just fits a separate regression for each column of `y` which effectively assumes independence of the columns of \$y\$ (conditional on \$x\$) - is there a way to do general multivariate regression with non-independence association structures? I know you can do multivariate regression in `lme4` by doing univariate regression with correlated errors, but is there a package that will let you do general multivariate regression in a more intuitive way? –  Macro May 29 '12 at 23:38