I am trying to increase the efficiency of a script where, basically, I run a number of linear regressions and for each fitted model I store the estimated coefficients and standard errors results in a previously created data frame, say `results`

.

Hence the data frame `results`

is already with the required dimensions before storing any regression coefficient.

Also, for each `i`

-th regression I make:

```
mod.fit <- plm(y ~ x1 + x2, index="group", sample)
```

and then I run:

```
results[i,1] <- summary(m.fit)$coefficients[1,1]
results[i,2] <- summary(m.fit)$coefficients[2,1]
results[i,3] <- summary(m.fit)$coefficients[1,2]
results[i,4] <- summary(m.fit)$coefficients[2,2]
```

Is there a way for making the above storage step faster?

.

`summary()`

4 times per loop is silly. If you had to do this, do`sm <- summary(m.fit)`

and then four calls of`sm$coefficients[x,y]`

. – Gavin Simpson Jan 5 '13 at 19:32`m.fit`

is so... But if it is of class`"lm"`

then you'll need a little more than just`coef(m.fit)`

, but not much more than`sqrt(diag(vcov(m.fit)))`

. – Gavin Simpson Jan 5 '13 at 20:47