Can I use spacy in python to find NP with specific neighbors? I want Noun phrases from my text that has verb before and after it.

  • Text and output example ? Jun 21, 2017 at 5:51

3 Answers 3

  1. You can merge the noun phrases ( so that they do not get tokenized seperately).
  2. Analyse the dependency parse tree, and see the POS of neighbouring tokens.

    >>> import spacy
    >>> nlp = spacy.load('en')
    >>> sent = u'run python program run, to make this work'
    >>> parsed = nlp(sent)
    >>> list(parsed.noun_chunks)
    [python program]
    >>> for noun_phrase in list(parsed.noun_chunks):
    ...     noun_phrase.merge(noun_phrase.root.tag_, noun_phrase.root.lemma_, noun_phrase.root.ent_type_)
    python program
    >>> [(token.text,token.pos_) for token in parsed]
    [(u'run', u'VERB'), (u'python program', u'NOUN'), (u'run', u'VERB'), (u',', u'PUNCT'), (u'to', u'PART'), (u'make', u'VERB'), (u'this', u'DET'), (u'work', u'NOUN')]
  3. By analysing the POS of adjacent tokens, you can get your desired noun phrases.

  4. A better approach would be to analyse the dependency parse tree, and see the lefts and rights of the noun phrase, so that even if there is a punctuation or other POS tag between the noun phrase and verb, you can increase your search coverage
  • It looks good but I want to automatically fetch all the Noun Phrase that has Verbs before and after it. For one sentence, one can easily read, analyze and parse but what about a panda data frame with 5000 records and each record has one cell of text that you want to analyze. Jun 23, 2017 at 17:49
  • That should be trivial too. Jun 23, 2017 at 18:12
  • Actually, I am doing spacy for the first time and very new to NLP. In your answer you are outputting all the tokens and the pos tags attached with them. I am interested in extracting NourPhrases that has verbs before after it. Jun 23, 2017 at 18:15
  • 1
    isn't it all tokenized words with their POS tags. In this case, it happened to be in the order of Verb+noun+Verb. I was looking to extract all such combination from a large corpus of text. I did some reading and I think, it can be easily done by navigating the parse tree. Jun 23, 2017 at 19:30
  • 1
    I think, that you basically got the answer to your question handed to you on a plate, and almost sounds like you fail to see it. As @DhruvPathak indicates, either you phrased your question badly and you actually mean something else, but otherwise this code looks like it does exactly what you ask for.
    – Igor
    Jul 11, 2017 at 9:53

From https://spacy.io/usage/linguistic-features#dependency-parse

You can use Noun chunks. Noun chunks are "base noun phrases" – flat phrases that have a noun as their head. You can think of noun chunks as a noun plus the words describing the noun – for example, "the lavish green grass" or "the world’s largest tech fund". To get the noun chunks in a document, simply iterate over Doc.noun_chunks.

        import spacy
    ​    nlp = spacy.load('en_core_web_sm')
        doc = nlp(u"Autonomous cars shift insurance liability toward manufacturers")
        for chunk in doc.noun_chunks:


        Autonomous cars
        insurance liability
  • 2
    This doesn't filter noun chunks to only chunks that have verbs before and after it. Oct 24, 2018 at 14:27

If you want to re-tokenize using merge phrases, I prefer this (rather than noun chunks) :

import spacy
nlp = spacy.load('en_core_web_sm')
doc = nlp(u"Autonomous cars shift insurance liability toward manufacturers")
for token in doc:

and the output will be :

Autonomous cars
insurance liability

I choose this way because each token has property for further process :)

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.