How can I plot a dendrogram right on top of a matrix of values, reordered appropriately to reflect the clustering, in Python? An example is the following figure:


I use scipy.cluster.dendrogram to make my dendrogram and perform hierarchical clustering on a matrix of data. How can I then plot the data as a matrix where the rows have been reordered to reflect a clustering induced by the cutting the dendrogram at a particular threshold, and have the dendrogram plotted alongside the matrix? I know how to plot the dendrogram in scipy, but not how to plot the intensity matrix of data with the right scale bar next to it.

Any help on this would be greatly appreciated.


2 Answers 2


The question does not define matrix very well: "matrix of values", "matrix of data". I assume that you mean a distance matrix. In other words, element D_ij in the symmetric nonnegative N-by-N distance matrix D denotes the distance between two feature vectors, x_i and x_j. Is that correct?

If so, then try this (edited June 13, 2010, to reflect two different dendrograms):

import scipy
import pylab
import scipy.cluster.hierarchy as sch
from scipy.spatial.distance import squareform

# Generate random 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])

condensedD = squareform(D)

# Compute and plot first dendrogram.
fig = pylab.figure(figsize=(8,8))
ax1 = fig.add_axes([0.09,0.1,0.2,0.6])
Y = sch.linkage(condensedD, method='centroid')
Z1 = sch.dendrogram(Y, orientation='left')

# Compute and plot second dendrogram.
ax2 = fig.add_axes([0.3,0.71,0.6,0.2])
Y = sch.linkage(condensedD, method='single')
Z2 = sch.dendrogram(Y)

# Plot distance matrix.
axmatrix = fig.add_axes([0.3,0.1,0.6,0.6])
idx1 = Z1['leaves']
idx2 = Z2['leaves']
D = D[idx1,:]
D = D[:,idx2]
im = axmatrix.matshow(D, aspect='auto', origin='lower', cmap=pylab.cm.YlGnBu)

# Plot colorbar.
axcolor = fig.add_axes([0.91,0.1,0.02,0.6])
pylab.colorbar(im, cax=axcolor)


Good luck! Let me know if you need more help.

Edit: For different colors, adjust the cmap attribute in imshow. See the scipy/matplotlib docs for examples. That page also describes how to create your own colormap. For convenience, I recommend using a preexisting colormap. In my example, I used YlGnBu.

Edit: add_axes (see documentation here) accepts a list or tuple: (left, bottom, width, height). For example, (0.5,0,0.5,1) adds an Axes on the right half of the figure. (0,0.5,1,0.5) adds an Axes on the top half of the figure.

Most people probably use add_subplot for its convenience. I like add_axes for its control.

To remove the border, use add_axes([left,bottom,width,height], frame_on=False). See example here.

  • This is a great question. A couple of more questions: how can I show the clustering of the samples at the top? If the matrix is genes by samples, you've showed the genes on the left but I want to show the samples clustering on top. How can I adjust the axes appropriately to do that? Also, how can I adjust the color map to be yellow to blue and control the scale of the bar on the right? thanks so much!
    – user248237
    Jun 13, 2010 at 23:26
  • I uploaded a figure with a different color map. See edit. Could you define "gene" and "sample"? How is similarity computed? Nevertheless, I also added a second dendrogram above the matrix. Hopefully you can adjust it as you see fit.
    – Steve Tjoa
    Jun 14, 2010 at 0:29
  • Thanks Steve, that answered my question about the top dendrogram. Just another quick clarification: how do you set the arguments of add_axes? I'm not sure how you picked those numeric values. For example, I'd like to remove the boxes around the dendrograms and just show the tree. If these were regular subplots, I could "set_color(none)" on each spine in subplot.ax.spines. Can I do the same here?
    – user248237
    Jun 14, 2010 at 3:56
  • 2
    I think the way you use the linkage function is wrong. If you look at the source code of linkage(), if the first parameter (here you use D) is a matrix, it'll be treated as data, not distance. To input distance, you have to take the upper triangle of D and make it into a one dimension vector, then pass it to linkage().
    – danioyuan
    Mar 11, 2013 at 7:11
  • 1
    this answer is very helpful! but, as @danioyuan mentioned, the linkage function usage seems to be wrong now. using distance matrix, convert it to vector-form distance matrix. i.e. D = squareform(D) before using linkage. github.com/scipy/scipy/blob/v0.15.1/scipy/cluster/…
    – satomacoto
    Feb 10, 2015 at 9:52

If in addition to the matrix and dendrogram it is required to show the labels of the elements, the following code can be used, that shows all the labels rotating the x labels and changing the font size to avoid overlapping on the x axis. It requires moving the colorbar to have space for the y labels:

axmatrix.set_xticklabels(idx1, minor=False)

pylab.xticks(rotation=-90, fontsize=8)

axmatrix.set_yticklabels(idx2, minor=False)

axcolor = fig.add_axes([0.94,0.1,0.02,0.6])

The result obtained is this (with a different color map):

The result obtained is this: