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:
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.
If I initialise the colorbar with
drawedges=True, so that I can style its
dividersproperties, 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)) ax.add_collection(pc,) 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.
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])