I wrote a simple script that is intended to do hierarchical clustering on a simple test dataset.
I found the function fclusterdata to be a candidate to cluster my data into two clusters. It takes two mandatory call parameters: the data set and a threshold. The problem is, I couldn't find a threshold that would yield the expected two clusters.
I'd be happy if anyone can tell me what I am doing wrong. I'd also be happy if anyone could point on other approaches that would be better suited for my clustering (I explicitly want to avoid to specify the number of clusters beforehand.)
Here is my code:
import time import scipy.cluster.hierarchy as hcluster import numpy.random as random import numpy import pylab pylab.ion() data = random.randn(2,200) data[:100,:100] += 10 for i in range(5,15): thresh = i/10. clusters = hcluster.fclusterdata(numpy.transpose(data), thresh) pylab.scatter(*data[:,:], c=clusters) pylab.axis("equal") title = "threshold: %f, number of clusters: %d" % (thresh, len(set(clusters))) print title pylab.title(title) pylab.draw() time.sleep(0.5) pylab.clf()
Here is the output:
threshold: 0.500000, number of clusters: 129 threshold: 0.600000, number of clusters: 129 threshold: 0.700000, number of clusters: 129 threshold: 0.800000, number of clusters: 75 threshold: 0.900000, number of clusters: 75 threshold: 1.000000, number of clusters: 73 threshold: 1.100000, number of clusters: 58 threshold: 1.200000, number of clusters: 1 threshold: 1.300000, number of clusters: 1 threshold: 1.400000, number of clusters: 1