3

i have a pandas dataframe called 'data_stem' and there is a column named 'TWEET_SENT_1' which have strings like below (50 rows)

TWEET_SENT_1

the mack daddy of kiss cross

i liked that video body party

i want to apply porters stemmer in to 'TWEET_SENT_1' column (for all words of a row) i tried below code and it gives an error . could you please help me to overcome this

from nltk.stem import PorterStemmer, WordNetLemmatizer
porter_stemmer = PorterStemmer()
data_stem[' TWEET_SENT_1 '] = data_stem[' TWEET_SENT_1 '].apply(lambda x: [porter_stemmer.stem(y) for y in x])

below is the error

    ---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
<ipython-input-412-c16b1beddfb5> in <module>()
      1 from nltk.stem import PorterStemmer, WordNetLemmatizer
      2 porter_stemmer = PorterStemmer()
----> 3 data_stem[' TWEET_SENT_1 '] = data_stem[' TWEET_SENT_1 '].apply(lambda x: [porter_stemmer.stem(y) for y in x])

C:\Users\SampathR\Anaconda2\envs\dato-env\lib\site-packages\pandas\core\series.pyc in apply(self, func, convert_dtype, args, **kwds)
   2058             values = lib.map_infer(values, lib.Timestamp)
   2059 
-> 2060         mapped = lib.map_infer(values, f, convert=convert_dtype)
   2061         if len(mapped) and isinstance(mapped[0], Series):
   2062             from pandas.core.frame import DataFrame

pandas\src\inference.pyx in pandas.lib.map_infer (pandas\lib.c:58435)()

<ipython-input-412-c16b1beddfb5> in <lambda>(x)
      1 from nltk.stem import PorterStemmer, WordNetLemmatizer
      2 porter_stemmer = PorterStemmer()
----> 3 data_stem[' TWEET_SENT_1 '] = data_stem[' TWEET_SENT_1 '].apply(lambda x: [porter_stemmer.stem(y) for y in x])

TypeError: 'NoneType' object is not iterable
10
  • 1
    Do you have any Nones in data_stem[' TWEET_SENT_1 ']? Are there indeed spaces around TWEET_SENT_1?
    – DYZ
    May 5, 2017 at 2:08
  • @DYZ thanks very much. there's no any none in data_stem[' TWEET_SENT_1 ']. yes there are spaces between TWEET_SENT_1. when i execute porter_stemmer.stem(data_stem.iloc[1,2]) it works. but i want apply it to each words and all rows of the column May 5, 2017 at 3:37
  • 1
    You need to tokenize before applying the way you are. The way you do porter_stemmer.stem(y) in a list comprehension. It will do letter by letter and not word by word which is what you want.
    – Satyadev
    May 5, 2017 at 5:58
  • @Satyadev . following code gives the expected output for one row porter_stemmer.stem(data_stem.iloc[1,2]) `u' that damn body party song is stuck in my head ' is there any way to do without tokenize as above? thanks very much for your reply May 5, 2017 at 6:57
  • From what you have mentioned- TWEET SENT 1 x = "the mack daddy of kiss cross" Can you try [porter_stemmer.stem(y) for y in x] and tell me if you get the desired output?
    – Satyadev
    May 5, 2017 at 6:58

2 Answers 2

13

Applying three different operations to the series with millions of rows is very expensive operation. Instead, apply all at once:

def stem_sentences(sentence):
    tokens = sentence.split()
    stemmed_tokens = [porter_stemmer.stem(token) for token in tokens]
    return ' '.join(stemmed_tokens)

data_stem['TWEET_SENT_1'] = data_stem['TWEET_SENT_1'].apply(stem_sentences)

(Note: This is just a modified version of the accepted answer)

1
  • Good boosting technique. There is no mention of a million rows , there is a mention of 50 rows. Regardless, enjoy your point hunt :)
    – Satyadev
    Jul 17, 2018 at 9:54
6

What you need to do first is tokenize your sentences. Tokenize means splitting a sentence into words based on the kind of delimiters you have so that you avoid things like punctuations which sometimes are not really required. This depends on the use case though. In sequence modeling where you are trying to predict the next sequence, a comma matters but when you are trying to get pos tags for words just for analysis , it might not.Anyhow, here is how to do the tokenization.

data_stem['TWEET_TOKENIZED']=data_stem['TWEET_SENT_1'].apply(lambda x : filter(None,x.split(" ")))

Apply your stemmer to the above tokenized column as follows:

data_stem['Tweet_stemmed']=data_stem['TWEET_TOKENIZED'].apply(lambda x : [porter_stemmer.stem(y) for y in x])

Update : Adding concatenation functionality

To get back the tweet into sentence format, do the following:

data_stem['tweet_stemmed_sentence']=data_stem['Tweet_stemmed'].apply(lambda x : " ".join(x))
4
  • Great this works like a charm. small request, can i get the output as same as original string. ex: original text was 'the mack daddy of kiss cross' and Tweet_stemmed result is [the, mack, daddy, of, kiss, cross] , can i convert this again in to original format(not to the orginal words) without comma(,) and square brackets May 5, 2017 at 10:28
  • Can you paste some sample output here? Also , don't forget to accept the answer if it solved your question.
    – Satyadev
    May 5, 2017 at 10:33
  • Updated the answer.
    – Satyadev
    May 5, 2017 at 10:58
  • thanks very very much. you saved me :). i accepted the answer May 5, 2017 at 13:33

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