I have a big matrix `mat`

with rownames `group_label_x`

and colnames `group_label_y`

. I want to aggregate `mat`

into `ave_mat`

, by `group_label_x`

and `group_label_y`

, where the value of `ave_mat[i,j]`

is the average value of `mat[ group_label_x[i], group_label_y[j] ]`

. This can be achieved using a double forloop, or applying twice the `aggregate`

function (`aggregate( mat, by = list(group_label_x), FUN='mean' )`

). But is there any approach that can achieve faster speed? (since I have many matrices to aggregate).

The following code generates a demo random matrix of approximately 1E4 rows and 2E4 cols, which I want to aggregate into a ~1E3 x 1E3 matrix:

```
set.seed(1)
dim_x_raw = 1E4
dim_y_raw = 2E4
n_groups_x = 1E3
n_groups_y = 1E3
group_len_x = diff(sort(sample( 1:dim_x_raw, n_groups_x )))
group_label_x = rep( paste0('group_', 1:length(group_len_x)), group_len_x )
group_len_y = diff(sort(sample( 1:dim_y_raw, n_groups_y )))
group_label_y = rep( paste0('group_', 1:length(group_len_y)), group_len_y )
mat = matrix( runif( length(group_label_x)*length(group_label_y) ), length(group_label_x) )
######################################
```

My aggreagation code (which is slow):

```
ave_mat_x = aggregate( mat, by = list(group_label_x), FUN='mean' )
ave_mat = aggregate( t(ave_mat_x), by = list(group_label_y), FUN='mean' )
```

`data.table`

and`tidyverse`

are very fast in r – sai saran Nov 9 at 12:28