I'm running a clustering algorithm called
MeanShift() in the
sklearn.cluster module (here are the docs). The object I'm dealing with has 310,057 points distributed in 3-dimensional space. The computer I'm running it on has a total of 128Gb of ram, so when I get the following error, I have a hard time believing that I'm actually using all of it.
[user@host ~]$ python meanshifttest.py Traceback (most recent call last): File "meanshifttest.py", line 13, in <module> ms = MeanShift().fit(X) File "/home/user/anaconda/lib/python2.7/site-packages/sklearn/cluster/mean_shift_.py", line 280, in fit cluster_all=self.cluster_all) File "/home/user/anaconda/lib/python2.7/site-packages/sklearn/cluster/mean_shift_.py", line 99, in mean_shift bandwidth = estimate_bandwidth(X) File "/home/user/anaconda/lib/python2.7/site-packages/sklearn/cluster/mean_shift_.py", line 45, in estimate_bandwidth d, _ = nbrs.kneighbors(X, return_distance=True) File "/home/user/anaconda/lib/python2.7/site-packages/sklearn/neighbors/base.py", line 313, in kneighbors return_distance=return_distance) File "binary_tree.pxi", line 1313, in sklearn.neighbors.kd_tree.BinaryTree.query (sklearn/neighbors/kd_tree.c:10007) File "binary_tree.pxi", line 595, in sklearn.neighbors.kd_tree.NeighborsHeap.__init__ (sklearn/neighbors/kd_tree.c:4709) MemoryError
The code I'm running looks like this:
from sklearn.cluster import MeanShift import asciitable import numpy as np import time data = asciitable.read('./multidark_MDR1_FOFID85000000000_ParticlePos.csv',delimiter=',') x = [data[i] for i in range(len(data))] y = [data[i] for i in range(len(data))] z = [data[i] for i in range(len(data))] X = np.array(zip(x,y,z)) t0 = time.time() ms = MeanShift().fit(X) t1 = time.time() print str(t1-t0) + " seconds." labels = ms.labels_ print set(labels)
Would anybody have any ideas about what's happening? Unfortunately I can't switch clustering algorithms because this is the only one I've found which does a good job in addition to accepting no linking lengths/k number of clusters/a priori information.
Thanks in advance!
**UPDATE: I looked into the documentation a little more, and it says the following:
Because this implementation uses a flat kernel and
a Ball Tree to look up members of each kernel, the complexity will is
to O(T*n*log(n)) in lower dimensions, with n the number of samples
and T the number of points. In higher dimensions the complexity will
tend towards O(T*n^2).
Scalability can be boosted by using fewer seeds, for example by using
a higher value of min_bin_freq in the get_bin_seeds function.
Note that the estimate_bandwidth function is much less scalable than
the mean shift algorithm and will be the bottleneck if it is used.
This seems to make some sense, because if you look at the error in detail it is complaining about estimate_bandwidth. Is this an indication that I'm simply using too many particles for the algorithm?