1

How can I move tick labels by a few pixels?

In my case, I want to move the This is class #N-labels on the X-axis to the right by a few pixels.

I am aware of the horizontalalign/ha values right, center, and left; but I want to "improve" the looks of the right alignment.

Take the following example which will produce the plot shown below:

import pandas as pd
import numpy as np

categories = ['This is class #{}'.format(n) for n in range(10)]
data = {
    'Value': [categories[np.random.randint(10)] for _ in range(100)], 
    'id': [1000+i for i in range(100)]
}

df = pd.DataFrame(data)

ax = df.Value.value_counts().sort_index().plot(kind='bar', rot=45)
plt.xticks(ha='right')

Results in:

I think, subjectively, that the plot would look better if the labels were translated to the right so that the tick were placed over the "#". In other words, a "middle ground" between the right and center alignment options.

Side notes:

I'm using pandas, but I believe that is irrelevant to the issue, as it's using matplotlib to do its plotting anyway.

The plt.xticks() method is used for simplicity, I could just as well use ax.set_xticklabels(), but I don't need to rewrite the label texts, and AFAIK there is no shortcut to set the horizontal alignment without also copying the existing labels into with ax.set_xticklabels(labels, **more_options), as ha is not a valid key in matplotlib 2's ax.xaxis.set_tick_params()-method.

I'm aware of pandas' Series.hist()-method, but I think the Series.value_counts().plot(kind='bar') looks prettier when I have few categories and want the number of bars to be the same as number of categories.

1 Answer 1

6

In order to move the ticklabels by a few pixels you may add a translation to their transformation chain. E.g. to move by 20 pixels to the right, use

import matplotlib.transforms as mtrans
# ...
trans = mtrans.Affine2D().translate(20, 0)
for t in ax.get_xticklabels():
    t.set_transform(t.get_transform()+trans)

If course the number of pixels that you need to shift in order for the #-sign to be under the tickmark is not a priori clear - that needs to be found out via trial and error. Or maybe you have a different hint on by how much you want to shift in what other units.

Here is the complete example,

import matplotlib.pyplot as plt
import pandas as pd
import numpy as np
import matplotlib.transforms as mtrans

categories = ['This is class #{}'.format(n) for n in range(10)]
data = {
    'Value': [categories[np.random.randint(10)] for _ in range(100)], 
    'id': [1000+i for i in range(100)]
}

df = pd.DataFrame(data)

ax = df.Value.value_counts().sort_index().plot(kind='bar', rot=45)
plt.xticks(ha='right')

trans = mtrans.Affine2D().translate(20, 0)
for t in ax.get_xticklabels():
    t.set_transform(t.get_transform()+trans)

plt.tight_layout()
plt.show()

producing

enter image description here

2
  • This worked perfectly as described. Nice answer with complete example and image. Jan 18, 2018 at 16:59
  • For some reason, I get the expected result in-line, but if I use "savefig", the saved image does not have the expected translation. Apr 3, 2021 at 6:13

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