I'm trying to come up with fast algorithm to find result of operation, where

- L - is symmetric
`n x n`

matrix with real numbers. - A - is sparse
`n x m`

matrix,`m < n`

. Each row has one and only one non-zero element, and it's equal to 1. It's also guaranteed that every column has at most two non-zero elements.

I come up with one algorithm, but I feel like there should be something faster than this.

Let's represent every column of A as pair of row numbers with non-zero elements. If a column has only one non-zero element, its row number listed twice. E.g. for the following matrix

Such representation would be

`column 0: [0, 2]; column 1: [1, 3]; column 2: [4, 4]`

Or we can list it as a single array: `A = [0, 2, 1, 3, 4, 4];`

Now, can be calculated as:

```
for (i = 0; i < A.length; i += 2):
if A[i] != A[i + 1]:
# sum of two column vectors, i/2-th column of L'
L'[i/2] = L[A[i]] + L[A[i + 1]]
else:
L'[i/2] = L[A[i]]
```

To calculate we do it one more time:

```
for (i = 0; i < A.length; i += 2):
if A[i] != A[i + 1]:
# sum of two row vectors, i/2-th row of L''
L''[i/2] = L'[A[i]] + L'[A[i + 1]]
else:
L''[i/2] = L'[A[i]]
```

The time complexity of such approach is O(m*n + m*n), and space complexity (to get final result) is O(n*n). I'm wondering if it's possible to improve it to O(m*m) in terms of space and/or performance?