Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have a large csv of similarities between keywords that I would like to convert it to a triangular distance matrix (because it is very large and sparse would be even better) to perform hierarchical clustering using scipy. My current data csv looks like:

a,  b, 1
b,  a, 1
c,  a, 2
a,  c, 2

I am not sure how to do this and I can't find any easy tutorials for clustering in python.

Thanks for any help!

share|improve this question
up vote 2 down vote accepted

There are two parts to this question:

  • How do you load distances from a CSV of this format into a (maybe sparse) triangular distance matrix?

  • Given a triangular distance matrix, how do you do hierarchical clustering with scipy?

How to load the data: I don't think scipy.cluster.hierarchy works with sparse data, so let's do it dense. I'm also going to do it into the full square matrix and then take the upper triangle that scipy wants, out of laziness; you could index directly into the compressed version if you were being more clever.

from collections import defaultdict
import csv
import functools
import itertools
import numpy as np

# name_to_id associates a name with an integer 0, 1, ...
name_to_id = defaultdict(functools.partial(next, itertools.count()))

with open('file.csv') as f:
    reader = csv.reader(f)

    # do one pass over the file to get all the IDs so we know how 
    # large to make the matrix, then another to fill in the data.
    # this takes more time but uses less memory than loading everything
    # in in one pass, because we don't know how large the matrix is; you
    # can skip this if you do know the number of elements from elsewhere.
    for name_a, name_b, dist in reader:
        idx_a = name_to_id[name_a]
        idx_b = name_to_id[name_b]

    # make the (square) distances matrix
    # this should really be triangular, but the formula for 
    # indexing into that is escaping me at the moment
    n_elem = len(name_to_id)
    dists = np.zeros((n_elem, n_elem))

    # go back to the start of the file and read in the actual data
    for name_a, name_b, dist in reader:
        idx_a = name_to_id[name_a]
        idx_b = name_to_id[name_b]
        dists[(idx_a, idx_b) if idx_a < idx_b else (idx_b, idx_a)] = dist

condensed = dists[np.triu_indices(n_elem, 1)]

Then call e.g. scipy.cluster.hierarchy.linkage with condensed. To map from the indices back to names, you can use something like

id_to_name = dict((id, name) for name, id in name_to_id.iteritems())
share|improve this answer
Thanks! My data is very large (about 50,000 keywords/objects) so I was hoping to make a lower triangular matrix for memory reasons. – rfoley Sep 13 '12 at 5:09
Now I'm just wondering how to get cluster assignments from ward clustering given the condensed distances. – rfoley Sep 13 '12 at 5:21
Do you think I could convert a sparse matrix of the distances to a condensed distances matrix? – rfoley Sep 13 '12 at 5:41
I have posted a related question if you think it is relevant I would be interested in hearing your opinion: stackoverflow.com/questions/12400301/… – rfoley Sep 13 '12 at 15:50
I have about 120,000 objects and I was wondering if it was at all possible to create a distance object to cluster in python. – rfoley Sep 13 '12 at 16:50

Your Answer


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.