# Reordering matrix elements to reflect column and row clustering in naiive python

I'm looking for a way to perform clustering separately on matrix rows and than on its columns, reorder the data in the matrix to reflect the clustering and putting it all together. The clustering problem is easily solvable, so is the dendrogram creation (for example in this blog or in "Programming collective intelligence"). However, how to reorder the data remains unclear for me.

Eventually, I'm looking for a way of creating graphs similar to the one below using naive Python (with any "standard" library such as numpy, matplotlib etc, but without using R or other external tools).

Clarifications

I was asked what I meant by reordering. When you cluster data in a matrix first by matrix rows, then by its columns, each matrix cell can be identified by the position in the two dendrograms. If you reorder the rows and the columns of the original matrix such that the elements that are close each to another in the dendrograms become close each to another in the matrix, and then generate heatmap, the clustering of the data may become evident to the viewer (as in the figure above)

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What do you mean by reordering? Swapping n neighboring rows/cols with another n? –  Hamish Grubijan Mar 16 '10 at 15:45
You want to use numpy / scipy when dealing with matrices for sure. Matplotlib also mimicks Matlab well. Here is a deal: if you can do this in Matlab, you can do it in scipy as well (trivial syntax difference if any). –  Hamish Grubijan Mar 16 '10 at 15:50
Ooh, +1 for the pretty picture ;-) –  Beni Cherniavsky-Paskin Mar 21 '10 at 16:58

I'm not sure completely understand, but it appears you are trying to re-index each axis of the array based on sorts of the dendrogram indicies. I guess that assumes there is some comparative logic in each branch delineation. If this is the case then would this work(?):

``````>>> x_idxs = [(0,1,0,0),(0,1,1,1),(0,1,1),(0,0,1),(1,1,1,1),(0,0,0,0)]
>>> y_idxs = [(1,1),(0,1),(1,0),(0,0)]
>>> a = np.random.random((len(x_idxs),len(y_idxs)))
>>> x_idxs2, xi = zip(*sorted(zip(x_idxs,range(len(x_idxs)))))
>>> y_idxs2, yi = zip(*sorted(zip(y_idxs,range(len(y_idxs)))))
>>> a2 = a[xi,:][:,yi]
``````

`x_idxs` and `y_idxs` are the dendrogram indicies. `a` is the unsorted matrix. `xi` and `yi` are your new row/column array indicies. `a2` is the sorted matrix while `x_idxs2` and `y_idxs2` are the new, sorted dendrogram indicies. This assumes that when the dendrogram was created that a `0` branch column/row is always comparatively larger/smaller than a `1` branch.

If your y_idxs and x_idxs are not lists but are numpy arrays, then you could use `np.argsort` in a similar manner.

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what exactly does * in "zip(*sorted..." do? –  bgbg Mar 24 '10 at 7:29
whenever I see `zip(*`, I think "transpose". See here for the use of `*` for unpacking: docs.python.org/tutorial/… –  Paul Mar 25 '10 at 2:30
and some more discussion here: stackoverflow.com/questions/19339/… –  Paul Mar 25 '10 at 2:39

See my recent answer, copied in part below, to this related question.

``````import scipy
import pylab
import scipy.cluster.hierarchy as sch

# Generate features and distance matrix.
x = scipy.rand(40)
D = scipy.zeros([40,40])
for i in range(40):
for j in range(40):
D[i,j] = abs(x[i] - x[j])

# Compute and plot dendrogram.
fig = pylab.figure()
Z = sch.dendrogram(Y, orientation='right')
axdendro.set_xticks([])
axdendro.set_yticks([])

# Plot distance matrix.
index = Z['leaves']
D = D[index,:]
D = D[:,index]
im = axmatrix.matshow(D, aspect='auto', origin='lower')
axmatrix.set_xticks([])
axmatrix.set_yticks([])

# Plot colorbar.
Thank you. I love matplotlib and I use it a lot. iPython helps you explore matplotlib and pylab further. To add labels to the axes of the distance matrix (pictured center), you may use the `set_xticks` and `set_xticklabels`. See matplotlib.sourceforge.net/api/… –  Steve Tjoa Sep 28 '11 at 18:58