I have two matrices. The first, `m1`

, is 100x100 and contains numbers with decimal places and the other, `m2`

, is 300x100 and is sparsely populated with integers, like so:

```
m1 <- matrix(rexp(1000, rate = .1), ncol = 100)
m2 <- matrix(sample(c(rep(0, 1000), rep(1, 10), rep(2, 1)), 300 * 100, replace = T), 300, 100)
```

Each row in `m1`

corresponds to the column of the same number in `m2`

. Each column `m2`

represents the number of occurrences of the corresponding row in `m1`

for that observation.

For each row in `m2`

, I want to get the `colMeans`

of each row of `m1`

corresponding to how many times it appears in that row of `m2`

. The result should be a 300x100 matrix. I want to know the most efficient way of doing this.

It's a complex operation but hopefully you understand what I mean. If you need any clarification I can give it. If it helps, what I'm trying to do is to get a document features matrix from a word feature matrix and a document-term matrix.

`tf.tile`

in tensor flow) and then use a tensor dot product making sure to collapse the correct dimensions, followed by a`tf.reduce_mean`

along the correct axis. – thc Apr 13 '18 at 22:19