I have a panda dataframe. There is one column, let's name it: 'col' Each entry of this column is a list of words. ['word1', 'word2', etc.]

How can I efficiently compute the lemma of all of those words using the nltk library?

import nltk

I want to be able to find a lemma for all words of all cells in one column of a pandas dataset.

My data looks similar to:

import pandas as pd
data = [[['walked','am','stressed','Fruit']],[['going','gone','walking','riding','running']]]
df = pd.DataFrame(data,columns=['col'])
  • Use either apply or applymap based on your data. Better show us some data so we can suggest proper one – Bharath Nov 29 '17 at 16:38

You can use apply from pandas with a function to lemmatize each words in the given string. Note that there are many ways to tokenize your text. You might have to remove symbols like . if you use whitespace tokenizer.

Below, I give an example on how to lemmatize a column of example dataframe.

import nltk

w_tokenizer = nltk.tokenize.WhitespaceTokenizer()
lemmatizer = nltk.stem.WordNetLemmatizer()

def lemmatize_text(text):
    return [lemmatizer.lemmatize(w) for w in w_tokenizer.tokenize(text)]

df = pd.DataFrame(['this was cheesy', 'she likes these books', 'wow this is great'], columns=['text'])
df['text_lemmatized'] = df.text.apply(lemmatize_text)
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  • Thanks ! But it tells me: 'DataFrame' object has no attribute 'text' ? – james Nov 29 '17 at 16:51
  • You have to give the name of the column that you want to apply the function! In my example, I create text as my example column. – titipata Nov 29 '17 at 16:53
  • It is normal that it take a long time ? – james Nov 29 '17 at 17:00
  • Your code works for your dataset. For my dataset, it tells me for the return statement: expected string or bytes-like object – james Nov 29 '17 at 17:05
  • I changed the "w_tokenizer.tokenize(text)" to text, since my entries are already single words (list of single words. But now it tells me: 'float' object is not iterable – james Nov 29 '17 at 17:08
['Sushi Bars', 'Restaurants']
['Burgers', 'Fast Food', 'Restaurants']

wnl = WordNetLemmatizer()

The below creates a function which takes list of words and returns list of lemmatized words. This should work.

def lemmatize(s):
'''For lemmatizing the word
     s = [wnl.lemmatize(word) for word in s]
     return s

dataset = dataset.assign(col_lemma = dataset.col.apply(lambda x: lemmatize(x))
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  • It tells me: 'DataFrame' object has no attribute 'col' – james Nov 29 '17 at 16:49

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