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Home/ Questions/Q 801179
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Editorial Team
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Editorial Team
Asked: May 14, 20262026-05-14T23:24:10+00:00 2026-05-14T23:24:10+00:00

I have a dictionary whose keys are strings and values are numpy arrays, e.g.:

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I have a dictionary whose keys are strings and values are numpy arrays, e.g.:

data = {'a': array([1,2,3]), 'b': array([4,5,6]), 'c': array([7,8,9])}

I want to compute a statistic between all pairs of values in ‘data’ and build an n by x matrix that stores the result. Assume that I know the order of the keys, i.e. I have a list of “labels”:

labels = ['a', 'b', 'c']

What’s the most efficient way to compute this matrix?

I can compute the statistic for all pairs like this:

result = []
for elt1, elt2 in itertools.product(labels, labels):
  result.append(compute_statistic(data[elt1], data[elt2]))

But I want result to be a n by n matrix, corresponding to “labels” by “labels”. How can I record the results as this matrix?
thanks.

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  1. Editorial Team
    Editorial Team
    2026-05-14T23:24:11+00:00Added an answer on May 14, 2026 at 11:24 pm

    You could use a nested loop, or a list comprehension like:

    result = [[compute_stat(data[row], data[col]) for col in labels]
              for row in labels]
    
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