spaCy/website/usage/_linguistic-features/_dependency-parse.jade

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//- 💫 DOCS > USAGE > LINGUISTIC FEATURES > DEPENDENCY PARSE
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p
| spaCy features a fast and accurate syntactic dependency parser, and has
| a rich API for navigating the tree. The parser also powers the sentence
| boundary detection, and lets you iterate over base noun phrases, or
| "chunks". You can check whether a #[+api("doc") #[code Doc]] object has
| been parsed with the #[code doc.is_parsed] attribute, which returns a
| boolean value. If this attribute is #[code False], the default sentence
| iterator will raise an exception.
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+h(3, "noun-chunks") Noun chunks
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p
| 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 worlds largest
| tech fund". To get the noun chunks in a document, simply iterate over
| #[+api("doc#noun_chunks") #[code Doc.noun_chunks]].
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+code("Example").
nlp = spacy.load('en')
doc = nlp(u'Autonomous cars shift insurance liability toward manufacturers')
for chunk in doc.noun_chunks:
print(chunk.text, chunk.root.text, chunk.root.dep_,
chunk.root.head.text)
+aside
| #[strong Text:] The original noun chunk text.#[br]
| #[strong Root text:] The original text of the word connecting the noun
| chunk to the rest of the parse.#[br]
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| #[strong Root dep:] Dependency relation connecting the root to its head.#[br]
| #[strong Root head text:] The text of the root token's head.#[br]
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+table(["Text", "root.text", "root.dep_", "root.head.text"])
- var style = [0, 0, 1, 0]
+annotation-row(["Autonomous cars", "cars", "nsubj", "shift"], style)
+annotation-row(["insurance liability", "liability", "dobj", "shift"], style)
+annotation-row(["manufacturers", "manufacturers", "pobj", "toward"], style)
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+h(3, "navigating") Navigating the parse tree
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p
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| spaCy uses the terms #[strong head] and #[strong child] to describe the words
| #[strong connected by a single arc] in the dependency tree. The term
| #[strong dep] is used for the arc label, which describes the type of
| syntactic relation that connects the child to the head. As with other
| attributes, the value of #[code .dep] is a hash value. You can get
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| the string value with #[code .dep_].
+code("Example").
doc = nlp(u'Autonomous cars shift insurance liability toward manufacturers')
for token in doc:
print(token.text, token.dep_, token.head.text, token.head.pos_,
[child for child in token.children])
+aside
| #[strong Text]: The original token text.#[br]
| #[strong Dep]: The syntactic relation connecting child to head.#[br]
| #[strong Head text]: The original text of the token head.#[br]
| #[strong Head POS]: The part-of-speech tag of the token head.#[br]
| #[strong Children]: The immediate syntactic dependents of the token.
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+table(["Text", "Dep", "Head text", "Head POS", "Children"])
- var style = [0, 1, 0, 1, 0]
+annotation-row(["Autonomous", "amod", "cars", "NOUN", ""], style)
+annotation-row(["cars", "nsubj", "shift", "VERB", "Autonomous"], style)
+annotation-row(["shift", "ROOT", "shift", "VERB", "cars, liability"], style)
+annotation-row(["insurance", "compound", "liability", "NOUN", ""], style)
+annotation-row(["liability", "dobj", "shift", "VERB", "insurance, toward"], style)
+annotation-row(["toward", "prep", "liability", "NOUN", "manufacturers"], style)
+annotation-row(["manufacturers", "pobj", "toward", "ADP", ""], style)
+codepen("dcf8d293367ca185b935ed2ca11ebedd", 370)
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p
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| Because the syntactic relations form a tree, every word has
| #[strong exactly one head]. You can therefore iterate over the arcs in
| the tree by iterating over the words in the sentence. This is usually
| the best way to match an arc of interest — from below:
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+code.
from spacy.symbols import nsubj, VERB
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# Finding a verb with a subject from below — good
verbs = set()
for possible_subject in doc:
if possible_subject.dep == nsubj and possible_subject.head.pos == VERB:
verbs.add(possible_subject.head)
p
| If you try to match from above, you'll have to iterate twice: once for
| the head, and then again through the children:
+code.
# Finding a verb with a subject from above — less good
verbs = []
for possible_verb in doc:
if possible_verb.pos == VERB:
for possible_subject in possible_verb.children:
if possible_subject.dep == nsubj:
verbs.append(possible_verb)
break
p
| To iterate through the children, use the #[code token.children]
| attribute, which provides a sequence of #[+api("token") #[code Token]]
| objects.
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+h(4, "navigating-around") Iterating around the local tree
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p
| A few more convenience attributes are provided for iterating around the
| local tree from the token. The #[+api("token#lefts") #[code Token.lefts]]
| and #[+api("token#rights") #[code Token.rights]] attributes provide
| sequences of syntactic children that occur before and after the token.
| Both sequences are in sentence order. There are also two integer-typed
| attributes, #[+api("token#n_rights") #[code Token.n_rights]] and
| #[+api("token#n_lefts") #[code Token.n_lefts]], that give the number of
| left and right children.
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+code.
doc = nlp(u'bright red apples on the tree')
assert [token.text for token in doc[2].lefts]) == [u'bright', u'red']
assert [token.text for token in doc[2].rights]) == ['on']
assert doc[2].n_lefts == 2
assert doc[2].n_rights == 1
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p
| You can get a whole phrase by its syntactic head using the
| #[+api("token#subtree") #[code Token.subtree]] attribute. This returns an
| ordered sequence of tokens. You can walk up the tree with the
| #[+api("token#ancestors") #[code Token.ancestors]] attribute, and
| check dominance with
| #[+api("token#is_ancestor") #[code Token.is_ancestor()]].
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+aside("Projective vs. non-projective")
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| For the #[+a("/models/en") default English model], the
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| parse tree is #[strong projective], which means that there are no crossing
| brackets. The tokens returned by #[code .subtree] are therefore guaranteed
| to be contiguous. This is not true for the German model, which has many
| #[+a(COMPANY_URL + "/blog/german-model#word-order", true) non-projective dependencies].
+code.
doc = nlp(u'Credit and mortgage account holders must submit their requests')
root = [token for token in doc if token.head is token][0]
subject = list(root.lefts)[0]
for descendant in subject.subtree:
assert subject.is_ancestor(descendant)
print(descendant.text, descendant.dep_, descendant.n_lefts, descendant.n_rights,
[ancestor.text for ancestor in descendant.ancestors])
+table(["Text", "Dep", "n_lefts", "n_rights", "ancestors"])
- var style = [0, 1, 1, 1, 0]
+annotation-row(["Credit", "nmod", 0, 2, "holders, submit"], style)
+annotation-row(["and", "cc", 0, 0, "Credit, holders, submit"], style)
+annotation-row(["mortgage", "compound", 0, 0, "account, Credit, holders, submit"], style)
+annotation-row(["account", "conj", 1, 0, "Credit, holders, submit"], style)
+annotation-row(["holders", "nsubj", 1, 0, "submit"], style)
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p
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| Finally, the #[code .left_edge] and #[code .right_edge] attributes
| can be especially useful, because they give you the first and last token
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| of the subtree. This is the easiest way to create a #[code Span] object
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| for a syntactic phrase. Note that #[code .right_edge] gives a token
| #[strong within] the subtree — so if you use it as the end-point of a
| range, don't forget to #[code +1]!
+code.
doc = nlp(u'Credit and mortgage account holders must submit their requests')
span = doc[doc[4].left_edge.i : doc[4].right_edge.i+1]
span.merge()
for token in doc:
print(token.text, token.pos_, token.dep_, token.head.text)
+table(["Text", "POS", "Dep", "Head text"])
- var style = [0, 1, 1, 0]
+annotation-row(["Credit and mortgage account holders", "NOUN", "nsubj", "submit"], style)
+annotation-row(["must", "VERB", "aux", "submit"], style)
+annotation-row(["submit", "VERB", "ROOT", "submit"], style)
+annotation-row(["their", "ADJ", "poss", "requests"], style)
+annotation-row(["requests", "NOUN", "dobj", "submit"], style)
+infobox("Dependency label scheme", "📖")
| For a list of the syntactic dependency labels assigned by spaCy's models
| across different languages, see the
| #[+a("/api/annotation#pos-tagging") dependency label scheme documentation].
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+h(3, "displacy") Visualizing dependencies
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p
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| The best way to understand spaCy's dependency parser is interactively.
| To make this easier, spaCy v2.0+ comes with a visualization module. Simply
| pass a #[code Doc] or a list of #[code Doc] objects to
| displaCy and run #[+api("top-level#displacy.serve") #[code displacy.serve]] to
| run the web server, or #[+api("top-level#displacy.render") #[code displacy.render]]
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| to generate the raw markup. If you want to know how to write rules that
| hook into some type of syntactic construction, just plug the sentence into
| the visualizer and see how spaCy annotates it.
+code.
from spacy import displacy
doc = nlp(u'Autonomous cars shift insurance liability toward manufacturers')
displacy.serve(doc, style='dep')
+infobox
| For more details and examples, see the
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| #[+a("/usage/visualizers") usage guide on visualizing spaCy]. You
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| can also test displaCy in our #[+a(DEMOS_URL + "/displacy", true) online demo].
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+h(3, "disabling") Disabling the parser
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p
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| In the #[+a("/models") default models], the parser is loaded and enabled
| as part of the
| #[+a("/usage/processing-pipelines") standard processing pipeline].
| If you don't need any of the syntactic information, you should disable
| the parser. Disabling the parser will make spaCy load and run much faster.
| If you want to load the parser, but need to disable it for specific
| documents, you can also control its use on the #[code nlp] object.
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+code.
nlp = spacy.load('en', disable=['parser'])
nlp = English().from_disk('/model', disable=['parser'])
doc = nlp(u"I don't want parsed", disable=['parser'])
+infobox("Important note: disabling pipeline components")
.o-block
| Since spaCy v2.0 comes with better support for customising the
| processing pipeline components, the #[code parser] keyword argument
| has been replaced with #[code disable], which takes a list of
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| #[+a("/usage/processing-pipelines") pipeline component names].
| This lets you disable both default and custom components when loading
| a model, or initialising a Language class via
| #[+api("language#from_disk") #[code from_disk]].
+code-new.
nlp = spacy.load('en', disable=['parser'])
doc = nlp(u"I don't want parsed", disable=['parser'])
+code-old.
nlp = spacy.load('en', parser=False)
doc = nlp(u"I don't want parsed", parse=False)