# "pythonic" way to fill bag of words

I've got a list of words, about 273000 of them in the list `Word_array` There are about 17000 unique words, and they're stored in `Word_arrayU`

I want a count for each one

``````#make bag of worsds
Word_arrayU = np.unique(Word_array)
wordBag = [['0','0'] for _ in range(len(Word_array))] #prealocate necessary space
i=0
while i< len(Word_arrayU): #for each unique word
wordBag[i][0] = Word_arrayU[i]
#I think this is the part that takes a long time.  summing up a list comprehension with a conditional.  Just seems sloppy
wordBag[i][1]=sum([1 if x == Word_arrayU[i] else 0 for x in Word_array])
i=i+1
``````

summing up a list comprehension with a conditional. Just seems sloppy; is there a better way to do it?

• Why not use `collections.Counter`? Oct 13, 2016 at 20:09
• have you looked at using Counter from collections? It's sole purpose is to give you a dictionary where the keys are the items from an iterable and the value is the count of those items from the iterable... Oct 13, 2016 at 20:09
• @jonrsharpe I like how we think.... Oct 13, 2016 at 20:09
• `len([x for x in Word_array if x == Word_arrayU[i]])` Oct 13, 2016 at 20:11
• `len(filter(Word_arrayU[i], Word_array))` Oct 13, 2016 at 20:14

``````from collections import Counter
counter = Counter(Word_array)
the_count_of_some_word = counter["some_word"]

#printing the counts
for word, count in counter.items():
print("{} appears {} times.".format(word, count)
``````

Since you are already using numpy.unique, just set return_counts=True in the unique call:

``````import numpy as np

unique,  count = np.unique(Word_array, return_counts=True)
``````

That will give you two arrays, the unique elements and their counts:

``````n [10]: arr = [1,3,2,11,3,4,5,2,3,4]

In [11]: unique,  count = np.unique(arr, return_counts=True)

In [12]: unique
Out[12]: array([ 1,  2,  3,  4,  5, 11])

In [13]: count
Out[13]: array([1, 2, 3, 2, 1, 1])
``````

Building on the suggestion from @jonrsharpe...

``````from collections import Counter

words = Counter()

words['foo'] += 1
words['foo'] += 1
words['bar'] += 1
``````

Output

``````Counter({'bar': 1, 'foo': 2})
``````

It's really convenient because you don't have to initialize words.

You can also initialize directly from a list of words:

``````Counter(['foo', 'foo', 'bar'])
``````

Output

``````Counter({'bar': 1, 'foo': 2})
``````

In python 3 there is a built-in list.count function. For example:

``````>>> h = ["a", "b", "a", "a", "c"]
>>> h.count("a")
3
>>>
``````

So, you could make it more efficient by doing something like:

``````Word_arrayU = np.unique(Word_array)
wordBag = []
for uniqueWord in Word_arrayU:
wordBag.append([uniqueWord, Word_array.count(uniqueWord)])
``````

I don't know about most 'Pythonic' but definitely the easiest way of doing this would be to use collections.Counter.

``````from collections import Counter

Word_array = ["word1", "word2", "word3", "word1", "word2", "word1"]

wordBag = Counter(Word_array).items()
``````
• Terrible suggestion - count twice? If you - for some obscure reason - want tuples, Counter(Word_array).items() will do the trick Oct 13, 2016 at 20:32
• If you call a function over t the same data twice - that is bad practice. Since OP is talking about list of 237,000 words - yep, it is terrible. Oct 13, 2016 at 21:16

If you want a less efficient (than `Counter`), but more transparent solution, you can use `collections.defaultdict`

``````from collections import defaultdict
my_counter = defaultdict(int)
for word in word_array:
my_counter[word] += 1
``````
• why would he use defaultdict over Counter? Oct 13, 2016 at 20:18