3.1 KiB
After tokenization, spaCy can parse and tag a given Doc
. This is where
the statistical model comes in, which enables spaCy to make a prediction of
which tag or label most likely applies in this context. A model consists of
binary data and is produced by showing a system enough examples for it to make
predictions that generalize across the language – for example, a word following
"the" in English is most likely a noun.
Linguistic annotations are available as
Token
attributes. Like many NLP libraries, spaCy
encodes all strings to hash values to reduce memory usage and improve
efficiency. So to get the readable string representation of an attribute, we
need to add an underscore _
to its name:
### {executable="true"}
import spacy
nlp = spacy.load("en_core_web_sm")
doc = nlp("Apple is looking at buying U.K. startup for $1 billion")
for token in doc:
print(token.text, token.lemma_, token.pos_, token.tag_, token.dep_,
token.shape_, token.is_alpha, token.is_stop)
- Text: The original word text.
- Lemma: The base form of the word.
- POS: The simple part-of-speech tag.
- Tag: The detailed part-of-speech tag.
- Dep: Syntactic dependency, i.e. the relation between tokens.
- Shape: The word shape – capitalization, punctuation, digits.
- is alpha: Is the token an alpha character?
- is stop: Is the token part of a stop list, i.e. the most common words of the language?
Text | Lemma | POS | Tag | Dep | Shape | alpha | stop |
---|---|---|---|---|---|---|---|
Apple | apple | PROPN |
NNP |
nsubj |
Xxxxx |
True |
False |
is | be | VERB |
VBZ |
aux |
xx |
True |
True |
looking | look | VERB |
VBG |
ROOT |
xxxx |
True |
False |
at | at | ADP |
IN |
prep |
xx |
True |
True |
buying | buy | VERB |
VBG |
pcomp |
xxxx |
True |
False |
U.K. | u.k. | PROPN |
NNP |
compound |
X.X. |
False |
False |
startup | startup | NOUN |
NN |
dobj |
xxxx |
True |
False |
for | for | ADP |
IN |
prep |
xxx |
True |
True |
$ | $ | SYM |
$ |
quantmod |
$ |
False |
False |
1 | 1 | NUM |
CD |
compound |
d |
False |
False |
billion | billion | NUM |
CD |
probj |
xxxx |
True |
False |
Tip: Understanding tags and labels
Most of the tags and labels look pretty abstract, and they vary between languages.
spacy.explain
will show you a short description – for example,spacy.explain("VBZ")
returns "verb, 3rd person singular present".
Using spaCy's built-in displaCy visualizer, here's what our example sentence and its dependencies look like:
import DisplaCyLongHtml from 'images/displacy-long.html'; import { Iframe } from 'components/embed'