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I'd like to run 10 regressions against the same regressor, then pull all the standard errors without using a loop.

depVars <- as.matrix(data[,1:10]) # multiple dependent variables
regressor <- as.matrix([,11]) # independent variable
allModels <- lm(depVars~regressor) # multiple, single variable regressions

summary(allModels)[1] # Can "view" the standard error for 1st regression, but can't extract...

allModels is stored as an mlm object, which is really tough to work with. It'd be great if I could store a list of lm objects or a matrix with statistics of interest.

Again, the objective is to NOT use a loop. Here is a loop equivalent:

regressor <- as.matrix([,11]) # independent variable
for(i in 1:10){ 
  tempObject <- lm(data[,i]~regressor) # single regressions
  table1Data[i,1] <- summary(tempObject)$coefficients[2,2] # assign std error
  rm(tempObject)
}
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A way to use allModels, instead of calling lm one by one in the loop, is to lapply extraction on summary(allModels). E.g. unlist(lapply(summary(allModels), function(x) x$coefficients[2,2])). If lapply's invisible looping is, also, not wanted, I can't think of a different approach. –  alexis_laz Nov 2 '13 at 10:19

2 Answers 2

If you put your data in long format it's very easy to get a bunch of regression results using lmList from the nlme or lme4 packages. The output is a list of regression results and the summary can give you a matrix of coefficients, just like you wanted.

library(lme4)

m <- lmList( y ~ x | group, data = dat)
summary(m)$coefficients

Those coefficients are in a simple 3 dimensional array so the standard errors are at [,2,2].

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yes! I forget this one! –  agstudy Nov 2 '13 at 17:04

Here an option:

  1. put your data in the long format using regressor as an id key.
  2. do your regression against value by group of variable.

For example , using mtcars data set:

library(reshape2)
dat.m <- melt(mtcars,id.vars='mpg')  ## mpg is my regressor
library(plyr)
ddply(dat.m,.(variable),function(x)coef(lm(variable~value,data=x)))
  variable (Intercept)         value
1       cyl           1  8.336774e-18
2      disp           1  6.529223e-19
3        hp           1  1.106781e-18
4      drat           1 -1.505237e-16
5        wt           1  8.846955e-17
6      qsec           1  6.167713e-17
7        vs           1  2.442366e-16
8        am           1 -3.381738e-16
9      gear           1 -8.141220e-17
10     carb           1 -6.455094e-17
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