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I tried hard, but I'm stuck with matplotlib here. Please overlook, that the mpl docs are a bit confusing to me . My question concerns the following:

  1. I draw a symmetrical n*n matrix D with matshow function. That works.

  2. I want to do the same thing, just with different order of (the n) items in D

    D = [:,neworder]
    D = [neworder,:]
    

Now, how do I make the ticks reproduce this neworder, preferably using additionally MaxNLocator?

As far as I understand...

set_xticklabels assigns labels to the ticks by order, independently of where the ticks are set?! set_xticks (mpl docs: 'Set the x ticks with list of ticks') here I'm really not sure what it does. Can somebody explain it precisely? I don't know, whether these functions are helpful in my case at all. Maybe even things are different between using a common xy plot and matshow.

import numpy as np
import matplotlib.pyplot as plt

fig = plt.figure()
ax = fig.gca()

D = np.arange(100).reshape(10,10)

neworder = np.arange(10)
np.random.shuffle(neworder)

D = D[:,neworder]
D = D[neworder, :]

# modify ticks somehow...

ax.matshow(D)
plt.show()

Referring to Paul's answer, think I tried smth like this. Using the neworder to define positions and using it for the labels, I added plt.xticks(neworder, neworder) as tick-modifier. For example with neworder = [9 8 4 7 2 6 3 0 1 5] I get is this
correct order, but incorrect ticks The order of the labels is correct, but the ticks are not. The labels should be independently show the correct element independently of where the ticks are set. So where is the mistake?

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2 Answers 2

up vote 1 down vote accepted

I think what you want to do is set the labels on the new plot to show the rearranged order of the values. Is that right? If so, you want to keep the tick locations the same, but change the labels:

plt.xticks(np.arange(0,10), neworder)
plt.yticks(np.arange(0,10), neworder)

Edit: Note that these commands must be issued after matshow. This seems to be a quirk of matshow (plot does not show this behaviour, for example). Perhaps it's related to this line from the plt.matshow documentation:

Because of how :func:matshow tries to set the figure aspect ratio to be the one of the array, if you provide the number of an already existing figure, strange things may happen.

Perhaps the safest way to go is to issue plt.matshow(D) without first creating a figure, then use plt.xticks and plt.yticks to make adjustments.

Your question also asks about the set_ticks and related axis methods. The same thing can be accomplished using those tools, again after issuing matshow:

ax = plt.gca()
ax.xaxis.set_ticks(np.arange(0,10))  # turn on all tick locations
ax.xaxis.set_ticklabels(neworder)    # use neworder for labels

Edit2: The next part of your question is related to setting a max number of ticks. 20 would require a new example. For our example I'll set the max no. of ticks at 2:

ax = plt.gca()
ax.xaxis.set_major_locator(plt.MaxNLocator(nbins=3))  # one less tick than 'bin'
tl = ax.xaxis.get_ticklocs()                          # get current tick locations
tl[1:-1] = [neworder[idx] for idx in tl[1:-1]]        # find what the labels should be at those locs
ax.xaxis.set_ticklabels(tl)                           # set the labels
plt.draw()
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the problem is, it gives me 5 ticks still (like x axis on the pic). while handing [0,1,2,3,4,5,6,7,8,9], the ticks are set at [0,2,4,6,8] showing neworder[1:5] as labels. i need it to show 10 ticks, or if 5, then labelling it neworder[0,2,4,6,8]... –  embert Oct 29 '13 at 21:08
    
@talkturkey: I see the same behaviour when going through your example from scratch. In ipython, I don't see the actual map until I issue plt.draw() (plt.show() doesn't cut it). Then the axes need to be re-ticked with the above two commands. Edited my answer to reflect this. Can you confirm that works for you? –  spinup Oct 30 '13 at 6:07
    
First problem is solved. Indeed it was just, that I put the tick-modification before matshow. Now is it possible to combine this with a locator so that e. g. max 20 ticks are shown with correct labelling? –  embert Oct 30 '13 at 7:40
    
@talkturkey: Of course! All is possible. :-) See further edit. –  spinup Oct 30 '13 at 8:23
    
Works perfectly. So to 'get_ticklocs' and to reassign the labels is the trick. I don't fully grasp why the ticks tl[0] and tl[-1] are outside the map, but knowing it I can take it into account –  embert Oct 30 '13 at 8:40

You are on the right track. The plt.xticks command is what you need.

You can specify the xtick locations and the label at each position with the following command. labelPositions = arange(len(D)) newLabels = ['z','y','x','w','v','u','t','s','q','r'] plt.xticks(labelPositions,newLabels)

You could also specify an arbitrary order for labelPositions, as they will be assigned based on the values in the vector.

labelPositions = [0,9,1,8,2,7,3,6,4,5]
newLabels = ['z','y','x','w','v','u','t','s','q','r']
plt.xticks(labelPositions,newLabels)
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