7

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.

code:

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
11
  • 1
    I'm not super familiar with SpaCy, but are you retraining it on your data or using it out of the box?
    – Engineero
    Mar 4, 2020 at 21:40
  • 1
    Once I tried to do lemmatization in Spanish, but the only useful thing I found was to go with stemming, using SnowBallStemmer from NLTK.
    – jjsantoso
    Mar 4, 2020 at 21:58
  • 2
    I'm not a Spanish speaker but for English lemmatization SpaCy relies on knowing what the part-of-speech is for each word. It gets this info during the tagging step of nlp(text), however it doesn't look like your text is real sentences so it's probably getting the POS tags wrong a lot. This will lead to errors. BTW... SpaCy is only about 85% correct for English lemmatization. You might want to look at Stanford's CoreNLP or CLiPS/pattern.en, although all of these solutions only get to low 90% accuracy, and all need to know the POS of the word.
    – bivouac0
    Mar 4, 2020 at 22:24
  • 3
    If you know the part-of-speech for each word (ie... if they're all nouns) you can skip the tagging step (nlp(text)) and call the lemmatizer directly with the POS type. This will speed up the process significantly and will likely improve accuracy as well.
    – bivouac0
    Mar 4, 2020 at 22:36
  • 1
    If you know the POS for each word, try calling the lemmatizer directly and passing in the POS. If you don't know the POS for each word, then stemming is probably your only option.
    – bivouac0
    Mar 5, 2020 at 0:22

4 Answers 4

16

Unlike the English lemmatizer, spaCy's Spanish lemmatizer does not use PoS information at all. It relies on a lookup list of inflected verbs and lemmas (e.g., ideo idear, ideas idear, idea idear, ideamos idear, etc.). It will just output the first match in the list, regardless of its PoS.

I actually developed spaCy's new rule-based lemmatizer for Spanish, which takes PoS and morphological information (such as tense, gender, number) into account. These fine-grained rules make it a lot more accurate than the current lookup lemmatizer. It will be released soon!

Meanwhile, you can maybe use Stanford CoreNLP or FreeLing.

14
  • I'll be waiting when you have the project realased. Meanwhile I will look up Standford CoreNLP and FreeLing (in your experience which one you recommend?)
    – Y4RD13
    Mar 5, 2020 at 20:15
  • 1
    I think both are very accurate, but I haven't used them that much to have a preference. FreeLing is rule-based and Stanford is neural. Mar 7, 2020 at 1:18
  • When you release your new rule_based, post it as an update of your answer. It will be really helpful.
    – Y4RD13
    Mar 7, 2020 at 3:56
  • 1
    !pip install stanza import stanza stanza.download('es', package='ancora', processors='tokenize,mwt,pos,lemma', verbose=True) stNLP = stanza.Pipeline(processors='tokenize,mwt,pos,lemma', lang='es', use_gpu=True) doc = stNLP('Barack Obama nació en Hawaii.') print(*[f'word: {word.text+" "}\tlemma: {word.lemma}' for sent in doc.sentences for word in sent.words], sep='\n')
    – Y4RD13
    Jul 26, 2020 at 18:30
  • 2
    @RubialesAlberto it will be released with spacy v3 Aug 11, 2020 at 10:34
2

One option is to make your own lemmatizer.

This might sound frightening, but fear not! It is actually very simple to do one.

I've recently made a tutorial on how to make a lemmatizer, the link is here:

https://medium.com/analytics-vidhya/how-to-build-a-lemmatizer-7aeff7a1208c

As a summary, you'd have to:

  • Have a POS Tagger (you can use spaCy tagger) to tag input words.
  • Get a corpus of words and their lemmas - here, I suggest you download a Universal Dependencies Corpus for Spanish - just follow the steps in the tutorial mentioned above.
  • Create a lemma dict from the words extracted in the corpus.
  • Save the dict and make a wrapper function that receives both the word and its PoS.

In code, it'd look like this:

def lemmatize(word, pos):
   if word in dict:
      if pos in dict[word]:
          return dict[word][pos]
   return word

Simple, right?

In fact, simple lemmatization doesn't require a lot of processing as one would think. The hard part lies at PoS Tagging, but you have that for free. Either way, if you want to do Tagging yourself, you can see this other tutorial I made:

https://medium.com/analytics-vidhya/part-of-speech-tagging-what-when-why-and-how-9d250e634df6

Hope you get it solved.

0
2

Maybe you can use FreeLing, this library offers, among many functionalities lemmatization in Spanish, Catalan, Basque, Italian and other languages.

In my experience, lemmatization in Spanish and Catalan is quite accurate and although it natively supports C++, it has an API for Python and another for Java.

1

You can use spacy-stanza. It has spaCy's API with the Stanza's models:

import stanza
from spacy_stanza import StanzaLanguage

text = "personas, ideas, cosas"

snlp = stanza.Pipeline(lang="es")
nlp = StanzaLanguage(snlp)
doc = nlp(text)
for token in doc:
    print(token.lemma_)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.