I have 3 numpy recarrays with following structure. The first column is some position (Integer) and the second column is a score (Float).

**Input:**

```
a = [[1, 5.41],
[2, 5.42],
[3, 12.32],
dtype=[('position', '<i4'), ('score', '<f4')])
]
b = [[3, 8.41],
[6, 7.42],
[4, 6.32],
dtype=[('position', '<i4'), ('score', '<f4')])
]
c = [[3, 7.41],
[7, 6.42],
[1, 5.32],
dtype=[('position', '<i4'), ('score', '<f4')])
]
```

All 3 arrays contain the same amount of elements.

I am looking for an efficient way to combine these three 2d arrays into one array based on the position column.

The output arary for the example above should look like this:

**Output:**

```
output = [[3, 12.32, 8.41, 7.41],
dtype=[('position', '<i4'), ('score1', '<f4'),('score2', '<f4'),('score3', '<f4')])]
```

Only the row with position 3 is in the output array because this position appears in all 3 input arrays.

**Update**: My naive approach would be following steps:

- create vector of the first columns of my 3 input arrays.
- use intersect1D to get the intersection of these 3 vectors.
- somehow retrieve indexes for the vector for all 3 input arrays.
- create new array with filtered rows from the 3 input arrays.

**Update2**:
Each position value can be in one, two or all three input arrays. In my output array I only want to include rows for position values which appear in all 3 input arrays.