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I have written a python script to extract words from a pandas dataframe column. I observed that while extracting words, if the last letter of the word is 's', the last 's' gets truncated. Below is the actual code and output

My code

import re
import unicodedata
import nltk

# Create dataframe
data = ['gautam das',
        'vas',
        'kansas usa',
        'maryam lass']
  
# Create the dataframe
df = pd.DataFrame(data, columns=['name'])
df = pd.concat([df[col].astype(str).str.lower() for col in df.columns], axis=1)

def basic_clean(text):
    wnl = nltk.stem.WordNetLemmatizer()
    text = (unicodedata.normalize('NFKD', text)
        .encode('ascii', 'ignore')
        .decode('utf-8', 'ignore')
        .lower())
    words = re.sub(r'[^\w\s]', '', text).split()
    return([wnl.lemmatize(word) for word in words if word not in stopwords])

words = basic_clean(''.join(str(df['name'].tolist())))
words

Output

['gautam', 'da', 'va', 'kansa', 'usa', 'maryam', 'lass']

In this example, the words 'gautam','usa' and 'maryam' are extracted correctly but 'das' is extracted as 'da', 'vas' is extracted as 'va' and 'kansas' is extracted as 'kansa'. However 'lass' is extracted correctly its last 's' is not truncated.

Question: Why is this happening and how can I avoid it? I do not mind a solution that does not use NLTK as long as it extracts words efficiently.

1 Answer 1

3

This is because you are using the lemmatize() method from the WordNetLemmatizer() class. Although the class is called a lemmatizer, it uses a special _morphy method that actually stems the words instead of lemmatizing them. While I don't know what language model you're using, my guess is that the WordNetLemmatizer classifies the words with an 's' at the end as some sort of plural morpheme, which ultimately results in a cut-off. For more information about the inner workings, see the documentation for the WordNetLemmatizer as well as the morphy method of nltk.

If you do not need the token lemmatization, you can omit the process. Otherwise, you could consider using spaCy. You would need to download a language model of your choice and lemmatize your words using something like this:

import spacy
nlp = spacy.load("en_core_web_sm")
lemmas = []
doc = nlp(text)
for token in doc:
    if (token.is_stop == False) and (token.is_punct == False):
        lemmas.append(token.lemma_)

Hope this helps.

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