How to generate a word frequency histogram, where bars are ordered according to their height

I have a long list of words, and I want to generate a histogram of the frequency of each word in my list. I was able to do that in the code below:

``````import csv
from collections import Counter
import numpy as np

word_list = ['A','A','B','B','A','C','C','C','C']

counts = Counter(merged)

labels, values = zip(*counts.items())

indexes = np.arange(len(labels))

plt.bar(indexes, values)
plt.show()
``````

It doesn't, however, display the bins by rank (i.e. by frequency, so highest frequency is first bin on the left and so on), even though when I print `counts` it orders them for me `Counter({'C': 4, 'A': 3, 'B': 2})`. How could I achieve that?

You can achieve the desired output by sorting your data first and then pass the ordered arrays to `bar`; below I use `numpy.argsort` for that. The plot then looks as follows (I also added the labels to the bar):

Here is the code that produces the plot with a few inline comments:

``````from collections import Counter
import numpy as np
import matplotlib.pyplot as plt

word_list = ['A', 'A', 'B', 'B', 'A', 'C', 'C', 'C', 'C']

counts = Counter(word_list)

labels, values = zip(*counts.items())

# sort your values in descending order
indSort = np.argsort(values)[::-1]

labels = np.array(labels)[indSort]
values = np.array(values)[indSort]

indexes = np.arange(len(labels))

bar_width = 0.35

plt.bar(indexes, values)

plt.xticks(indexes + bar_width, labels)
plt.show()
``````

In case you want to plot only the first `n` entries, you can replace the line

``````counts = Counter(word_list)
``````

by

``````counts = dict(Counter(word_list).most_common(n))
``````

In the case above, `counts` would then be

``````{'A': 3, 'C': 4}
``````

for `n = 2`.

If you like to remove the frame of the plot and label the bars directly, you can check this post.

• I have more than 4000 words to count, so how to generate word frequency histogram of only top 20 words? – user7657960 Dec 14 '17 at 8:28
• @AAKM: You can use `counts.most_common(20)` i.e. `counts = Counter(word_list).most_common(20)`. – Cleb Dec 14 '17 at 8:34
• AttributeError Traceback (most recent call last) <ipython-input-33-704ddcc6ce26> in <module>() 5 counts = Counter(df['Text']).most_common(10) 6 ----> 7 labels, values = zip(*counts.items()) 8 9 # sort your values in descending order AttributeError: 'list' object has no attribute 'items' – user7657960 Dec 14 '17 at 8:47
• @AAKM: True, `most_common` returns a list, not a dictionary, I updated the post. So, `dict(Counter(word_list).most_common(20))` should work for you now. – Cleb Dec 14 '17 at 8:55