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I'm getting started with pandas, and have one column of data in a larger DataFrame such as

0                  one two
1            two seven six
2           three one five
3    seven five five eight
4                 six four
5                    three
dtype: object

and what I'd like to do is split the sequences of words into their component parts, then get a unique set or counts for the words. I can do the split just fine

numbers.str.split(' ')

0                    [one, two]
1             [two, seven, six]
2            [three, one, five]
3    [seven, five, five, eight]
4                   [six, four]
5                       [three]
dtype: object

However, I'm not sure where to go from here. Again, I'd like to have output such as

['one', 'two', 'three', 'four', 'five', 'six', 'seven', 'eight']

or the same in a dictionary with counts, or in a Series/DataFrame equivalent of one of these two.

The best I've been able to do so far is to use apply() in combination with a Set to get the unique words. pandas is a very elegant package from what I've seen so far, and it seems like this is probably within easy reach for someone who knows it better than I do.

Thanks in advance!

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I won't answer as there may well be a more efficient Pandas specific way, but in general itertools.chain.from_iterable() and collections.Counter will do this job for you. –  Lattyware Apr 20 at 12:46

2 Answers 2

up vote 3 down vote accepted

If I understand you correctly, I think you could do it as follows using pandas. I'll start with the series before you split the strings:

print s

0                  one two
1            two seven six
2           three one five
3    seven five five eight
4                 six four
5                    three

stacked = pd.DataFrame(s.str.split().tolist()).stack()
print stacked

0  0      one
   1      two
1  0      two
   1    seven
   2      six
2  0    three
   1      one
   2     five
3  0    seven
   1     five
   2     five
   3    eight
4  0      six
   1     four
5  0    three

Now just compute the value counts of the Series:

print stacked.value_counts()

five     3
one      2
three    2
six      2
two      2
seven    2
eight    1
four     1
dtype: int64
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That works well for my dataset, thanks. –  Steve T Apr 21 at 2:13

This code makes a dictionary of all of your words and their counts.

x = ['one two', 'two seven six', 'three one five', 'seven five five eight', 'six four', 'three']

#create list comprehension of all elements
x_list = [j for i in x for j in i.split()]
print x_list

# ['one', 'two', 'two', 'seven', 'six', 'three', 'one', 'five', 'seven', 'five', 'five', 'eight', 'six', 'four', 'three']

d = {}

#initialize keys
for e in set(x_list):
    d[e] = 0

#store counts in dict
for e in x_list:
        d[e] += 1

print d

The result is a dictionary with counts:

{'seven': 2, 'six': 2, 'three': 2, 'two': 2, 'four': 1, 'five': 3, 'eight': 1, 'one': 2}
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Thanks for chiming in. I think you were thrown off by my example data, so I have edited the question to clarify. I'm looking for an answer within the pandas API. –  Steve T Apr 20 at 16:48

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