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I am using SciPy's hierarchical agglomerative clustering methods to cluster a m x n matrix of features, but after the clustering is complete, I can't seem to figure out how to get the centroid from the resulting clusters. Below follows my code:

Y = distance.pdist(features)
Z = hierarchy.linkage(Y, method = "average", metric = "euclidean")
T = hierarchy.fcluster(Z, 100, criterion = "maxclust")

I am taking my matrix of features, computing the euclidean distance between them, and then passing them onto the hierarchical clustering method. From there, I am creating flat clusters, with a maximum of 100 clusters

Now, based on the flat clusters T, how do I get the 1 x n centroid that represents each flat cluster?

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So what happened in the end? Did you solve the problem? How? – Sibbs Gambling Sep 24 '13 at 5:05
I actually ended up using scikit-learn for this. – Adrian Rosebrock Sep 27 '13 at 12:42
Which function in scikit pleasE? – Sibbs Gambling Sep 28 '13 at 2:21
Check out the Ward function. – Adrian Rosebrock Sep 30 '13 at 13:28
Thanks for the follow-up. :) – Sibbs Gambling Sep 30 '13 at 13:47

You can do something like this (D=number of dimensions):

# Sum the vectors in each cluster
lens = {}      # will contain the lengths for each cluster
centroids = {} # will contain the centroids of each cluster
for idx,clno in enumerate(T):
    centroids[clno] += features[idx,:]
    lens[clno] += 1
# Divide by number of observations in each cluster to get the centroid
for clno in centroids:
    centroids[clno] /= float(lens[clno])

This will give you a dictionary with cluster number as the key and the centroid of the specific cluster as the value.

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A possible solution is a function, which returns a codebook with the centroids like kmeans in scipy.cluster.vq does. Only thing you need is the partition as vector with flat clusters part and the original observations X

def to_codebook(X, part):
    Calculates centroids according to flat cluster assignment

    X : array, (n, d)
        The n original observations with d features

    part : array, (n)
        Partition vector. p[n]=c is the cluster assigned to observation n

    codebook : array, (k, d)
        Returns a k x d codebook with k centroids
    codebook = []

    for i in range(part.min(), part.max()+1):
        codebook.append(X[part == i].mean(0))

    return np.vstack(codebook)
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