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I have a dataset which has 7265 samples and 132 features. I want to use the meanshift algorithm from scikit learn but I ran into this error:

Traceback (most recent call last):
  File "C:\Users\OJ\Dropbox\Dt\Code\visual\facetest\", line 130, in <module>
    labels, centers = getClusters(data,clusters)
  File "C:\Users\OJ\Dropbox\Dt\Code\visual\facetest\", line 34, in getClusters
  File "C:\python2.7\lib\site-packages\sklearn\cluster\", line 280, in fit
  File "C:\python2.7\lib\site-packages\sklearn\cluster\", line 137, in mean_shift
    nbrs = NearestNeighbors(radius=bandwidth).fit(sorted_centers)
  File "C:\python2.7\lib\site-packages\sklearn\neighbors\", line 642, in fit
    return self._fit(X)
  File "C:\python2.7\lib\site-packages\sklearn\neighbors\", line 180, in _fit
    raise ValueError("data type not understood")
ValueError: data type not understood

My code:

dataarray = np.array(data)
bandwidth = estimate_bandwidth(dataarray, quantile=0.2, n_samples=len(dataarray))
ms = MeanShift(bandwidth=bandwidth, bin_seeding=True)
labels = ms.labels_
cluster_centers = ms.cluster_centers_

If I check the datatype of the data variable I see:

print isinstance( dataarray, np.ndarray )
>>> True

The bandwidth is 0.925538333061 and the dataarray.dtype is float64

I'm using scikit learn 0.14.1

I can cluster with other algorithms in sci-kit (tried kmeans and dbscan). What am I doing wrong ?


The data can be found here: (pickle format) : and :

share|improve this question
What is dataarray.dtype? – larsmans Sep 26 '13 at 13:59
@larsmans It is float64 – Ojtwist Sep 26 '13 at 14:01
I can't reproduce this with either the current scikit-learn or 0.13. Which version are you using? – larsmans Sep 26 '13 at 14:10
0.14, I'll see if I can upload my data. – Ojtwist Sep 26 '13 at 14:11
The data can be found here in pickle format: – Ojtwist Sep 26 '13 at 14:16

1 Answer 1

up vote 2 down vote accepted

That`s a bug in scikit project. It is documented here.

There is a float -> int casting during the fitting process that can crash in some cases (by making the seed points be placed at the corner of the bins instead in the center). There is some code in the link to fix the problem.

If you don't wanna get your hands into the scikit code (and maintain compatibility between your code with other machines) i suggest you normalize your data before passing it to MeanShift.

Try this:

>>>from sklearn import preprocessing
>>>data2 = preprocessing.scale(dataarray)

And then use data2 into your code. It worked for me.

If you don't want to do either solution, it is a great opportunity to contribute to the project, making a pull request with the solution :)

Edit: You probably want to retain information to "descale" the results of meanshift. So, use a StandardScaler object, instead using a function to scale.

Good luck!

share|improve this answer
How embarrasing, I forgot my own bug report about this :) – larsmans Sep 26 '13 at 20:11
Lol. It was really you :P – Lucas Ribeiro Sep 26 '13 at 20:13
I looked at the issue, but the solution provided there did not solve my problem. I'm now using the StandardScaler object, but that is classifying everything in one cluster which seems odd. – Ojtwist Sep 27 '13 at 7:10
I'll take a look in the weekend. Could you post a link to gist of your implementation? – Lucas Ribeiro Sep 27 '13 at 15:15

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