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I've a Pandas data frame, where one column contains text. I'd like to get a list of unique words appearing across the entire column (space being the only split).

import pandas as pd

r1=['My nickname is ft.jgt','Someone is going to my place']

df=pd.DataFrame(r1,columns=['text'])

The output should look like this:

['my','nickname','is','ft.jgt','someone','going','to','place']

It wouldn't hurt to get a count as well, but it is not required.

Thanks,

G

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6 Answers 6

up vote 2 down vote accepted

Use a set to create the sequence of unique elements.

Do some clean-up on df to get the strings in lower case and split:

df['text'].str.lower().str.split()
Out[43]: 
0             [my, nickname, is, ft.jgt]
1    [someone, is, going, to, my, place]

Each list in this column can be passed to set.update function to get unique values. Use apply to do so:

results = set()
df['text'].str.lower().str.split().apply(results.update)
print results

set(['someone', 'ft.jgt', 'my', 'is', 'to', 'going', 'place', 'nickname'])
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1  
This is an excellent solution. And if you want to keep count, you could use results = Counter(). –  Andy Hayden Sep 21 '13 at 22:00

Use collections.Counter:

>>> from collections import Counter
>>> r1=['My nickname is ft.jgt','Someone is going to my place']
>>> Counter(" ".join(r1).split(" ")).items()
[('Someone', 1), ('ft.jgt', 1), ('My', 1), ('is', 2), ('to', 1), ('going', 1), ('place', 1), ('my', 1), ('nickname', 1)]
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Why the downvote? ... :-/ –  Ofir Israel Sep 24 '13 at 7:43

Building on @Ofir Israel's answer, specific to Pandas:

from collections import Counter
result = Counter(" ".join(df['text'].values.tolist()).split(" ")).items()
result

Will give you what you want, this converts the text column series values to a list, splits on spaces and counts the instances.

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uniqueWords = list(set(" ".join(r1).lower().split(" ")))
count = len(uniqueWords)
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If you want to do it from the DataFrame construct:

import pandas as pd

r1=['My nickname is ft.jgt','Someone is going to my place']

df=pd.DataFrame(r1,columns=['text'])

df.text.apply(lambda x: pd.value_counts(x.split(" "))).sum(axis = 0)

My          1
Someone     1
ft.jgt      1
going       1
is          2
my          1
nickname    1
place       1
to          1
dtype: float64

If you want a more flexible tokenization use nltk and its tokenize

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Per the v0.14.0 documentation (tip stable version at time of this writing), such stats would be returned (in another dataframe) by DataFrame.describe().

Note that the number of unique values is not returned for columns with numeric datatypes, but should be returned for string columns, such as the one in question.

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