Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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:

  1. create vector of the first columns of my 3 input arrays.
  2. use intersect1D to get the intersection of these 3 vectors.
  3. somehow retrieve indexes for the vector for all 3 input arrays.
  4. 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.

share|improve this question
    
what if it results in positions having different numbers of values, so the array would be mis-shaped? –  jterrace Jan 23 '12 at 17:09
    
I am not sure If I understand. I can guarantee that the 3 input arrays always have the same shape/structure (N,1) and in my case I always have 3 input arrays. The output array should be of shape (X,4) –  Ümit Jan 23 '12 at 17:18
    
So the arrays either ALL contain a value, or NONE contain a value? i.e. you won't get 2/3 containing a value? Also, could you edit the question to create the arrays, rather than showing the repr? –  jterrace Jan 23 '12 at 17:22
    
no it can happen that only one or two contain the position value. However in the output array I only want to include rows where I have position values in all 3 input arrays. I updated the question to make it clearer –  Ümit Jan 23 '12 at 17:27

1 Answer 1

up vote 1 down vote accepted

Here is one approach, I believe it should be reasonably fast. I think the first thing you want to do is count the number occurrences for each position. This function will handle that:

def count_positions(positions):
    positions = np.sort(positions)
    diff = np.ones(len(positions), 'bool')
    diff[:-1] = positions[1:] != positions[:-1]
    count = diff.nonzero()[0]
    count[1:] = count[1:] - count[:-1]
    count[0] += 1
    uniqPositions = positions[diff]
    return uniqPositions, count

Now using the function form above you want to take only the positions that occur 3 times:

positions = np.concatenate((a['position'], b['position'], c['position']))
uinqPos, count = count_positions(positions)
uinqPos = uinqPos[count == 3]

We will be using search sorted so we sort a b and c:

a.sort(order='position')
b.sort(order='position')
c.sort(order='position')

Now we can user search sorted to find where in each array to find each of our uniqPos:

new_array = np.empty((len(uinqPos), 4))
new_array[:, 0] = uinqPos
index = a['position'].searchsorted(uinqPos)
new_array[:, 1] = a['score'][index]
index = b['position'].searchsorted(uinqPos)
new_array[:, 2] = b['score'][index]
index = c['position'].searchsorted(uinqPos)
new_array[:, 3] = c['score'][index]

There might be a more elegant solution using dictionaries, but I thought of this one first so I'll leave that to someone else.

share|improve this answer
    
thanks for the code it works. –  Ümit Jan 24 '12 at 17:29

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.