# Correcting matplotlib colorbar ticks

I've placed a color bar alongside a choropleth map. Because the data being plotted are discrete rather than continuous values, I've used a LinearSegmentedColormap (using the recipe from the scipy cookbook), which I've initialised with my max counted value + 1, in order to show a colour for 0. However, I now have two problems: 1. The tick labels are incorrectly spaced (except for 5, more or less) – they should be located in the middle of the colour they identify; i.e. 0 - 4 should be moved up, and 6 - 10 should be moved down.

2. If I initialise the colorbar with `drawedges=True`, so that I can style its `dividers` properties, I get this: I'm creating my colormap and colorbar like so:

``````cbmin, cbmax = min(counts), max(counts)
# this normalises the counts to a 0,1 interval
counts /= np.max(np.abs(counts), axis=0)
# density is a discrete number, so we have to use a discrete color ramp/bar
cm = cmap_discretize(plt.get_cmap('YlGnBu'), int(cbmax) + 1)
mappable = plt.cm.ScalarMappable(cmap=cm)
mappable.set_array(counts)
# set min and max values for the colour bar ticks
mappable.set_clim(cbmin, cbmax)
pc = PatchCollection(patches, match_original=True)
# impose our colour map onto the patch collection
pc.set_facecolor(cm(counts))
cb = plt.colorbar(mappable, drawedges=True)
``````

So I'm wondering whether my converting the counts to a 0,1 interval is one of the problems.

### Update :

Having tried what Hooked suggested, the 0-value is correct, but subsequent values are set progressively higher, to the the point where 9 is where 10 should be: Here's the code I used:

``````cb = plt.colorbar(mappable)
labels = np.arange(0, int(cbmax) + 1, 1)
loc = labels + .5
cb.set_ticks(loc)
cb.set_ticklabels(labels)
``````

And just to confirm, `labels` definitely has the correct values:

``````In : np.arange(0, int(cbmax) + 1, 1)
Out: array([ 0,  1,  2,  3,  4,  5,  6,  7,  8,  9, 10])
``````
• It seems like the problem must lie with the colorbar you essentially create "by hand" using a PatchCollection. Is there any reason not to use a linear discrete colormap like the scipy page you linked? Sep 9, 2013 at 20:01
• You mean create the colormap, pass it PatchCollection as a `cmap` argument, and then `pc.set_array` to the counts? Sep 9, 2013 at 20:49
• No I mean use `cmap_discretize` as on the page wiki.scipy.org/Cookbook/Matplotlib/ColormapTransformations . This is how I generated my example which doesn't suffer from the strange placement. Sep 9, 2013 at 21:03

You are suffering from an off-by-one error. You have 10 ticklabels spread among 11 colors. You might be able to correct the error by using `np.linspace` instead of `np.arange`. Using `np.linspace` the third argument is the number of values desired. This reduces the amount of mental gymnastics needed to avoid the off-by-one error:

``````import matplotlib.pyplot as plt
import numpy as np
import matplotlib.cm as cm
import matplotlib.colors as mcolors

def colorbar_index(ncolors, cmap):
cmap = cmap_discretize(cmap, ncolors)
mappable = cm.ScalarMappable(cmap=cmap)
mappable.set_array([])
mappable.set_clim(-0.5, ncolors+0.5)
colorbar = plt.colorbar(mappable)
colorbar.set_ticks(np.linspace(0, ncolors, ncolors))
colorbar.set_ticklabels(range(ncolors))

def cmap_discretize(cmap, N):
"""Return a discrete colormap from the continuous colormap cmap.

cmap: colormap instance, eg. cm.jet.
N: number of colors.

Example
x = resize(arange(100), (5,100))
djet = cmap_discretize(cm.jet, 5)
imshow(x, cmap=djet)
"""

if type(cmap) == str:
cmap = plt.get_cmap(cmap)
colors_i = np.concatenate((np.linspace(0, 1., N), (0.,0.,0.,0.)))
colors_rgba = cmap(colors_i)
indices = np.linspace(0, 1., N+1)
cdict = {}
for ki,key in enumerate(('red','green','blue')):
cdict[key] = [ (indices[i], colors_rgba[i-1,ki], colors_rgba[i,ki])
for i in xrange(N+1) ]
# Return colormap object.
return mcolors.LinearSegmentedColormap(cmap.name + "_%d"%N, cdict, 1024)

fig, ax = plt.subplots()
A = np.random.random((10,10))*10
cmap = plt.get_cmap('YlGnBu')
ax.imshow(A, interpolation='nearest', cmap=cmap)
colorbar_index(ncolors=11, cmap=cmap)
plt.show()
`````` You can control the placement and the labels by hand. I'll start with a linear cmap generated from `cmap_discretize` on the page you linked:

``````import numpy as np
import pylab as plt

# The number of divisions of the cmap we have
k = 10

# Random test data
A = np.random.random((10,10))*k
c = cmap_discretize('jet', k)

# First show without
plt.subplot(121)
plt.imshow(A,interpolation='nearest',cmap=c)
plt.colorbar()

# Now label properly
plt.subplot(122)
plt.imshow(A,interpolation='nearest',cmap=c)

cb = plt.colorbar()
labels = np.arange(0,k,1)
loc    = labels + .5
cb.set_ticks(loc)
cb.set_ticklabels(labels)

plt.show()
`````` • Hmm, it's still not correct, but in a different way. See edit. Sep 9, 2013 at 19:51