When trying lemmatize in Spanish a csv with more than 60,000 words, SpaCy does not correctly write certain words, I understand that the model is not 100% accurate. However, I have not found any other solution, since NLTK does not bring a Spanish core.
A friend tried to ask this question in Spanish Stackoverflow, however, the community is quite small compared with this community, and we got no answers about it.
nlp = spacy.load('es_core_news_sm') def lemmatizer(text): doc = nlp(text) return ' '.join([word.lemma_ for word in doc]) df['column'] = df['column'].apply(lambda x: lemmatizer(x))
I tried to lemmatize certain words that I found wrong to prove that SpaCy is not doing it correctly:
text = 'personas, ideas, cosas' # translation: persons, ideas, things print(lemmatizer(text))
# Current output: personar , ideo , coser # translation: personify, ideo, sew # The expected output should be: persona, idea, cosa # translation: person, idea, thing