Here is an approach that uses `data.table`

The steps are (1) coerce each data.frame [element] in `x`

to data.table, with a column (called `rn`

) identifying the rownames. (2) on the large data.table, by rowname calculate the mean of each column (with `na.rm = TRUE`

dealing with `NA`

values). (3) remove the `rn`

column

```
library(data.table)
results <- rbindlist(lapply(x,data.table, keep.rownames = TRUE))[,
lapply(.SD, mean,na.rm = TRUE),by=rn][,rn := NULL]
```

an alternative would be to coerce to matrix, "simplify" to a 3-dimensional array then apply a mean over the appropriate margins

```
# for example
results <- as.data.frame(apply(simplify2array(lapply(x, as.matrix)),1:2,mean, na.rm = TRUE))
```

`matrices`

or`data.frames`

? there is a difference – mnel Aug 22 '13 at 3:33