I'm having trouble using
scipy.cluster to normalise my data. I'm passing in a numpy array which has had missing feature values filled in with the average for each feature.
The line it gets stuck on is:
data = scipy.cluster.vq.whiten(self.imputed)
This is the code I'm using to replace the missing data.
imputed = np.array([self.masked[:,i].filled(self.masked[:,i].mean()) for i in range(np.shape(self.masked))]) self.imputed = np.transpose(imputed)
I'm sure there's a better way of doing this part too, quite apart from the fact it seems to be breaking my code. It seems an ugly way of going about it and that normally means there's a better way with Python.
I've tried slicing down how much of the array I send to
whiten but no matter what I get the following in the Traceback.
Traceback (most recent call last): File "C:\Users\jamie.bull\workspace\Metadata\src\draft_workflow.py", line 87, in <module> dataset.cluster() File "C:\Users\jamie.bull\workspace\Metadata\src\draft_workflow.py", line 59, in cluster data = scipy.cluster.vq.whiten(self.imputed) File "C:\Enthought\Python27\lib\site-packages\scipy\cluster\vq.py", line 131, in whiten std_dev = std(obs, axis=0) File "C:\Enthought\Python27\lib\site-packages\numpy\core\fromnumeric.py", line 2467, in std return std(axis, dtype, out, ddof) AttributeError: sqrt
The clustering works fine with the same dataset without any missing data so I'm at a loss for what to try next.
I tried printing out the type of each item in
imputed for both the full data set and the one with missing data using:
for item in imputed: print type(item)
The difference between the two is that when the version which hasn't had the mean substitution and transpose called on it has one
numpy.ndarray for each row while the one which has been mean substituted has one for each column.