title |
teaser |
tag |
source |
Token |
An individual token — i.e. a word, punctuation symbol, whitespace, etc. |
class |
spacy/tokens/token.pyx |
Token.__init__
Construct a Token
object.
Example
doc = nlp(u"Give it back! He pleaded.")
token = doc[0]
assert token.text == u"Give"
Name |
Type |
Description |
vocab |
Vocab |
A storage container for lexical types. |
doc |
Doc |
The parent document. |
offset |
int |
The index of the token within the document. |
RETURNS |
Token |
The newly constructed object. |
Token.__len__
The number of unicode characters in the token, i.e. token.text
.
Example
doc = nlp(u"Give it back! He pleaded.")
token = doc[0]
assert len(token) == 4
Name |
Type |
Description |
RETURNS |
int |
The number of unicode characters in the token. |
Token.set_extension
Define a custom attribute on the Token
which becomes available via Token._
.
For details, see the documentation on
custom attributes.
Example
from spacy.tokens import Token
fruit_getter = lambda token: token.text in (u"apple", u"pear", u"banana")
Token.set_extension("is_fruit", getter=fruit_getter)
doc = nlp(u"I have an apple")
assert doc[3]._.is_fruit
Name |
Type |
Description |
name |
unicode |
Name of the attribute to set by the extension. For example, 'my_attr' will be available as token._.my_attr . |
default |
- |
Optional default value of the attribute if no getter or method is defined. |
method |
callable |
Set a custom method on the object, for example token._.compare(other_token) . |
getter |
callable |
Getter function that takes the object and returns an attribute value. Is called when the user accesses the ._ attribute. |
setter |
callable |
Setter function that takes the Token and a value, and modifies the object. Is called when the user writes to the Token._ attribute. |
Token.get_extension
Look up a previously registered extension by name. Returns a 4-tuple
(default, method, getter, setter)
if the extension is registered. Raises a
KeyError
otherwise.
Example
from spacy.tokens import Token
Token.set_extension("is_fruit", default=False)
extension = Token.get_extension("is_fruit")
assert extension == (False, None, None, None)
Name |
Type |
Description |
name |
unicode |
Name of the extension. |
RETURNS |
tuple |
A (default, method, getter, setter) tuple of the extension. |
Token.has_extension
Check whether an extension has been registered on the Token
class.
Example
from spacy.tokens import Token
Token.set_extension("is_fruit", default=False)
assert Token.has_extension("is_fruit")
Name |
Type |
Description |
name |
unicode |
Name of the extension to check. |
RETURNS |
bool |
Whether the extension has been registered. |
Token.remove_extension {#remove_extension tag="classmethod" new=""2.0.11""}
Remove a previously registered extension.
Example
from spacy.tokens import Token
Token.set_extension("is_fruit", default=False)
removed = Token.remove_extension("is_fruit")
assert not Token.has_extension("is_fruit")
Name |
Type |
Description |
name |
unicode |
Name of the extension. |
RETURNS |
tuple |
A (default, method, getter, setter) tuple of the removed extension. |
Token.check_flag
Check the value of a boolean flag.
Example
from spacy.attrs import IS_TITLE
doc = nlp(u"Give it back! He pleaded.")
token = doc[0]
assert token.check_flag(IS_TITLE) == True
Name |
Type |
Description |
flag_id |
int |
The attribute ID of the flag to check. |
RETURNS |
bool |
Whether the flag is set. |
Token.similarity
Compute a semantic similarity estimate. Defaults to cosine over vectors.
Example
apples, _, oranges = nlp(u"apples and oranges")
apples_oranges = apples.similarity(oranges)
oranges_apples = oranges.similarity(apples)
assert apples_oranges == oranges_apples
Name |
Type |
Description |
other |
- |
The object to compare with. By default, accepts Doc , Span , Token and Lexeme objects. |
RETURNS |
float |
A scalar similarity score. Higher is more similar. |
Token.nbor
Get a neighboring token.
Example
doc = nlp(u"Give it back! He pleaded.")
give_nbor = doc[0].nbor()
assert give_nbor.text == u"it"
Name |
Type |
Description |
i |
int |
The relative position of the token to get. Defaults to 1 . |
RETURNS |
Token |
The token at position self.doc[self.i+i] . |
Token.is_ancestor
Check whether this token is a parent, grandparent, etc. of another in the
dependency tree.
Example
doc = nlp(u"Give it back! He pleaded.")
give = doc[0]
it = doc[1]
assert give.is_ancestor(it)
Name |
Type |
Description |
descendant |
Token |
Another token. |
RETURNS |
bool |
Whether this token is the ancestor of the descendant. |
Token.ancestors
The rightmost token of this token's syntactic descendants.
Example
doc = nlp(u"Give it back! He pleaded.")
it_ancestors = doc[1].ancestors
assert [t.text for t in it_ancestors] == [u"Give"]
he_ancestors = doc[4].ancestors
assert [t.text for t in he_ancestors] == [u"pleaded"]
Name |
Type |
Description |
YIELDS |
Token |
A sequence of ancestor tokens such that ancestor.is_ancestor(self) . |
Token.conjuncts
A tuple of coordinated tokens, not including the token itself.
Example
doc = nlp(u"I like apples and oranges")
apples_conjuncts = doc[2].conjuncts
assert [t.text for t in apples_conjuncts] == [u"oranges"]
Name |
Type |
Description |
RETURNS |
tuple |
The coordinated tokens. |
Token.children
A sequence of the token's immediate syntactic children.
Example
doc = nlp(u"Give it back! He pleaded.")
give_children = doc[0].children
assert [t.text for t in give_children] == [u"it", u"back", u"!"]
Name |
Type |
Description |
YIELDS |
Token |
A child token such that child.head==self . |
Token.lefts
The leftward immediate children of the word, in the syntactic dependency parse.
Example
doc = nlp(u"I like New York in Autumn.")
lefts = [t.text for t in doc[3].lefts]
assert lefts == [u'New']
Name |
Type |
Description |
YIELDS |
Token |
A left-child of the token. |
Token.rights
The rightward immediate children of the word, in the syntactic dependency parse.
Example
doc = nlp(u"I like New York in Autumn.")
rights = [t.text for t in doc[3].rights]
assert rights == [u"in"]
Name |
Type |
Description |
YIELDS |
Token |
A right-child of the token. |
Token.n_lefts
The number of leftward immediate children of the word, in the syntactic
dependency parse.
Example
doc = nlp(u"I like New York in Autumn.")
assert doc[3].n_lefts == 1
Name |
Type |
Description |
RETURNS |
int |
The number of left-child tokens. |
Token.n_rights
The number of rightward immediate children of the word, in the syntactic
dependency parse.
Example
doc = nlp(u"I like New York in Autumn.")
assert doc[3].n_rights == 1
Name |
Type |
Description |
RETURNS |
int |
The number of right-child tokens. |
Token.subtree
A sequence containing the token and all the token's syntactic descendants.
Example
doc = nlp(u"Give it back! He pleaded.")
give_subtree = doc[0].subtree
assert [t.text for t in give_subtree] == [u"Give", u"it", u"back", u"!"]
Name |
Type |
Description |
YIELDS |
Token |
A descendant token such that self.is_ancestor(token) or token == self . |
Token.is_sent_start
A boolean value indicating whether the token starts a sentence. None
if
unknown. Defaults to True
for the first token in the Doc
.
Example
doc = nlp(u"Give it back! He pleaded.")
assert doc[4].is_sent_start
assert not doc[5].is_sent_start
Name |
Type |
Description |
RETURNS |
bool |
Whether the token starts a sentence. |
As of spaCy v2.0, the Token.sent_start
property is deprecated and has been
replaced with Token.is_sent_start
, which returns a boolean value instead of a
misleading 0
for False
and 1
for True
. It also now returns None
if the
answer is unknown, and fixes a quirk in the old logic that would always set the
property to 0
for the first word of the document.
- assert doc[4].sent_start == 1
+ assert doc[4].is_sent_start == True
Token.has_vector
A boolean value indicating whether a word vector is associated with the token.
Example
doc = nlp(u"I like apples")
apples = doc[2]
assert apples.has_vector
Name |
Type |
Description |
RETURNS |
bool |
Whether the token has a vector data attached. |
Token.vector
A real-valued meaning representation.
Example
doc = nlp(u"I like apples")
apples = doc[2]
assert apples.vector.dtype == "float32"
assert apples.vector.shape == (300,)
Name |
Type |
Description |
RETURNS |
numpy.ndarray[ndim=1, dtype='float32'] |
A 1D numpy array representing the token's semantics. |
Token.vector_norm
The L2 norm of the token's vector representation.
Example
doc = nlp(u"I like apples and pasta")
apples = doc[2]
pasta = doc[4]
apples.vector_norm # 6.89589786529541
pasta.vector_norm # 7.759851932525635
assert apples.vector_norm != pasta.vector_norm
Name |
Type |
Description |
RETURNS |
float |
The L2 norm of the vector representation. |
Attributes
Name |
Type |
Description |
doc |
Doc |
The parent document. |
sent 2.0.12 |
Span |
The sentence span that this token is a part of. |
text |
unicode |
Verbatim text content. |
text_with_ws |
unicode |
Text content, with trailing space character if present. |
whitespace_ |
unicode |
Trailing space character if present. |
orth |
int |
ID of the verbatim text content. |
orth_ |
unicode |
Verbatim text content (identical to Token.text ). Exists mostly for consistency with the other attributes. |
vocab |
Vocab |
The vocab object of the parent Doc . |
tensor 2.1.7 |
ndarray |
The tokens's slice of the parent Doc 's tensor. |
head |
Token |
The syntactic parent, or "governor", of this token. |
left_edge |
Token |
The leftmost token of this token's syntactic descendants. |
right_edge |
Token |
The rightmost token of this token's syntactic descendants. |
i |
int |
The index of the token within the parent document. |
ent_type |
int |
Named entity type. |
ent_type_ |
unicode |
Named entity type. |
ent_iob |
int |
IOB code of named entity tag. 3 means the token begins an entity, 2 means it is outside an entity, 1 means it is inside an entity, and 0 means no entity tag is set. |
ent_iob_ |
unicode |
IOB code of named entity tag. "B" means the token begins an entity, "I" means it is inside an entity, "O" means it is outside an entity, and "" means no entity tag is set. |
ent_id |
int |
ID of the entity the token is an instance of, if any. Currently not used, but potentially for coreference resolution. |
ent_id_ |
unicode |
ID of the entity the token is an instance of, if any. Currently not used, but potentially for coreference resolution. |
lemma |
int |
Base form of the token, with no inflectional suffixes. |
lemma_ |
unicode |
Base form of the token, with no inflectional suffixes. |
norm |
int |
The token's norm, i.e. a normalized form of the token text. Usually set in the language's tokenizer exceptions or norm exceptions. |
norm_ |
unicode |
The token's norm, i.e. a normalized form of the token text. Usually set in the language's tokenizer exceptions or norm exceptions. |
lower |
int |
Lowercase form of the token. |
lower_ |
unicode |
Lowercase form of the token text. Equivalent to Token.text.lower() . |
shape |
int |
Transform of the tokens's string, to show orthographic features. For example, "Xxxx" or "dd". |
shape_ |
unicode |
Transform of the tokens's string, to show orthographic features. For example, "Xxxx" or "dd". |
prefix |
int |
Hash value of a length-N substring from the start of the token. Defaults to N=1 . |
prefix_ |
unicode |
A length-N substring from the start of the token. Defaults to N=1 . |
suffix |
int |
Hash value of a length-N substring from the end of the token. Defaults to N=3 . |
suffix_ |
unicode |
Length-N substring from the end of the token. Defaults to N=3 . |
is_alpha |
bool |
Does the token consist of alphabetic characters? Equivalent to token.text.isalpha() . |
is_ascii |
bool |
Does the token consist of ASCII characters? Equivalent to all(ord(c) < 128 for c in token.text) . |
is_digit |
bool |
Does the token consist of digits? Equivalent to token.text.isdigit() . |
is_lower |
bool |
Is the token in lowercase? Equivalent to token.text.islower() . |
is_upper |
bool |
Is the token in uppercase? Equivalent to token.text.isupper() . |
is_title |
bool |
Is the token in titlecase? Equivalent to token.text.istitle() . |
is_punct |
bool |
Is the token punctuation? |
is_left_punct |
bool |
Is the token a left punctuation mark, e.g. ( ? |
is_right_punct |
bool |
Is the token a right punctuation mark, e.g. ) ? |
is_space |
bool |
Does the token consist of whitespace characters? Equivalent to token.text.isspace() . |
is_bracket |
bool |
Is the token a bracket? |
is_quote |
bool |
Is the token a quotation mark? |
is_currency 2.0.8 |
bool |
Is the token a currency symbol? |
like_url |
bool |
Does the token resemble a URL? |
like_num |
bool |
Does the token represent a number? e.g. "10.9", "10", "ten", etc. |
like_email |
bool |
Does the token resemble an email address? |
is_oov |
bool |
Is the token out-of-vocabulary? |
is_stop |
bool |
Is the token part of a "stop list"? |
pos |
int |
Coarse-grained part-of-speech. |
pos_ |
unicode |
Coarse-grained part-of-speech. |
tag |
int |
Fine-grained part-of-speech. |
tag_ |
unicode |
Fine-grained part-of-speech. |
dep |
int |
Syntactic dependency relation. |
dep_ |
unicode |
Syntactic dependency relation. |
lang |
int |
Language of the parent document's vocabulary. |
lang_ |
unicode |
Language of the parent document's vocabulary. |
prob |
float |
Smoothed log probability estimate of token's word type (context-independent entry in the vocabulary). |
idx |
int |
The character offset of the token within the parent document. |
sentiment |
float |
A scalar value indicating the positivity or negativity of the token. |
lex_id |
int |
Sequential ID of the token's lexical type, used to index into tables, e.g. for word vectors. |
rank |
int |
Sequential ID of the token's lexical type, used to index into tables, e.g. for word vectors. |
cluster |
int |
Brown cluster ID. |
_ |
Underscore |
User space for adding custom attribute extensions. |