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'])