0

I used following code lemmatize texts that were already excluding stop words and kept words longer than 3. However, after using following code, it split existing words such as 'wheres' to ['where', 's']; 'youre' to ['-PRON-','be']. I didn't expect 's', '-PRON-', 'be' these results in my text, what caused this behaviour and what I can do?

def lemmatization(texts, allowed_postags=['NOUN', 'ADJ', 'VERB', 'ADV']):
"""https://spacy.io/api/annotation"""

texts_out = []
for sent in texts:
    doc = nlp(" ".join(sent)) 
    texts_out.append([token.lemma_ for token in doc]) # though rare, if only keep the tokens with given posttags, add 'if token.pos_ in allowed_postags'
return texts_out

# Initialize spacy 'en' model, keeping only tagger component (for efficiency)
nlp = spacy.load('en', disable=['parser', 'ner'])

data_lemmatized = lemmatization(data_words_trigrams, allowed_postags=['NOUN', 'ADJ', 'VERB', 'ADV'])
2
  • 1
    This is how SpaCy works. It tokenizes the words (including splitting out contractions) and returns the lemma of a pronoun as -PRON- (since there really isn't a lemma for pronouns). Most NLP systems work similarly. If you want different behavior you'll have to specify how you want things to work since this is the expected.
    – bivouac0
    May 23, 2020 at 21:24
  • Thank you Bivouac0, so you suggest doing another round stop-word cleaning after lemmatization? Any other suggestion for the cleaning? Thank you.
    – MeiNan Zhu
    May 24, 2020 at 16:26

0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Browse other questions tagged or ask your own question.