spaCy/website/docs/api/entityrecognizer.md

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EntityRecognizer class spacy/pipeline/pipes.pyx

This class is a subclass of Pipe and follows the same API. The pipeline component is available in the processing pipeline via the ID "ner".

EntityRecognizer.Model

Initialize a model for the pipe. The model should implement the thinc.neural.Model API. Wrappers are under development for most major machine learning libraries.

Name Type Description
**kwargs - Parameters for initializing the model
RETURNS object The initialized model.

EntityRecognizer.__init__

Create a new pipeline instance. In your application, you would normally use a shortcut for this and instantiate the component using its string name and nlp.create_pipe.

Example

# Construction via create_pipe
ner = nlp.create_pipe("ner")

# Construction from class
from spacy.pipeline import EntityRecognizer
ner = EntityRecognizer(nlp.vocab)
ner.from_disk("/path/to/model")
Name Type Description
vocab Vocab The shared vocabulary.
model thinc.neural.Model / True The model powering the pipeline component. If no model is supplied, the model is created when you call begin_training, from_disk or from_bytes.
**cfg - Configuration parameters.
RETURNS EntityRecognizer The newly constructed object.

EntityRecognizer.__call__

Apply the pipe to one document. The document is modified in place, and returned. This usually happens under the hood when the nlp object is called on a text and all pipeline components are applied to the Doc in order. Both __call__ and pipe delegate to the predict and set_annotations methods.

Example

ner = EntityRecognizer(nlp.vocab)
doc = nlp(u"This is a sentence.")
# This usually happens under the hood
processed = ner(doc)
Name Type Description
doc Doc The document to process.
RETURNS Doc The processed document.

EntityRecognizer.pipe

Apply the pipe to a stream of documents. This usually happens under the hood when the nlp object is called on a text and all pipeline components are applied to the Doc in order. Both __call__ and pipe delegate to the predict and set_annotations methods.

Example

ner = EntityRecognizer(nlp.vocab)
for doc in ner.pipe(docs, batch_size=50):
    pass
Name Type Description
stream iterable A stream of documents.
batch_size int The number of texts to buffer. Defaults to 128.
YIELDS Doc Processed documents in the order of the original text.

EntityRecognizer.predict

Apply the pipeline's model to a batch of docs, without modifying them.

Example

ner = EntityRecognizer(nlp.vocab)
scores, tensors = ner.predict([doc1, doc2])
Name Type Description
docs iterable The documents to predict.
RETURNS tuple A (scores, tensors) tuple where scores is the model's prediction for each document and tensors is the token representations used to predict the scores. Each tensor is an array with one row for each token in the document.

EntityRecognizer.set_annotations

Modify a batch of documents, using pre-computed scores.

Example

ner = EntityRecognizer(nlp.vocab)
scores, tensors = ner.predict([doc1, doc2])
ner.set_annotations([doc1, doc2], scores, tensors)
Name Type Description
docs iterable The documents to modify.
scores - The scores to set, produced by EntityRecognizer.predict.
tensors iterable The token representations used to predict the scores.

EntityRecognizer.update

Learn from a batch of documents and gold-standard information, updating the pipe's model. Delegates to predict and get_loss.

Example

ner = EntityRecognizer(nlp.vocab)
losses = {}
optimizer = nlp.begin_training()
ner.update([doc1, doc2], [gold1, gold2], losses=losses, sgd=optimizer)
Name Type Description
docs iterable A batch of documents to learn from.
golds iterable The gold-standard data. Must have the same length as docs.
drop float The dropout rate.
sgd callable The optimizer. Should take two arguments weights and gradient, and an optional ID.
losses dict Optional record of the loss during training. The value keyed by the model's name is updated.

EntityRecognizer.get_loss

Find the loss and gradient of loss for the batch of documents and their predicted scores.

Example

ner = EntityRecognizer(nlp.vocab)
scores = ner.predict([doc1, doc2])
loss, d_loss = ner.get_loss([doc1, doc2], [gold1, gold2], scores)
Name Type Description
docs iterable The batch of documents.
golds iterable The gold-standard data. Must have the same length as docs.
scores - Scores representing the model's predictions.
RETURNS tuple The loss and the gradient, i.e. (loss, gradient).

EntityRecognizer.begin_training

Initialize the pipe for training, using data examples if available. If no model has been initialized yet, the model is added.

Example

ner = EntityRecognizer(nlp.vocab)
nlp.pipeline.append(ner)
optimizer = ner.begin_training(pipeline=nlp.pipeline)
Name Type Description
gold_tuples iterable Optional gold-standard annotations from which to construct GoldParse objects.
pipeline list Optional list of pipeline components that this component is part of.
sgd callable An optional optimizer. Should take two arguments weights and gradient, and an optional ID. Will be created via EntityRecognizer if not set.
RETURNS callable An optimizer.

EntityRecognizer.create_optimizer

Create an optimizer for the pipeline component.

Example

ner = EntityRecognizer(nlp.vocab)
optimizer = ner.create_optimizer()
Name Type Description
RETURNS callable The optimizer.

EntityRecognizer.use_params

Modify the pipe's model, to use the given parameter values.

Example

ner = EntityRecognizer(nlp.vocab)
with ner.use_params(optimizer.averages):
    ner.to_disk("/best_model")
Name Type Description
params dict The parameter values to use in the model. At the end of the context, the original parameters are restored.

EntityRecognizer.add_label

Add a new label to the pipe.

Example

ner = EntityRecognizer(nlp.vocab)
ner.add_label("MY_LABEL")
Name Type Description
label unicode The label to add.

EntityRecognizer.to_disk

Serialize the pipe to disk.

Example

ner = EntityRecognizer(nlp.vocab)
ner.to_disk("/path/to/ner")
Name Type Description
path unicode / Path A path to a directory, which will be created if it doesn't exist. Paths may be either strings or Path-like objects.
exclude list String names of serialization fields to exclude.

EntityRecognizer.from_disk

Load the pipe from disk. Modifies the object in place and returns it.

Example

ner = EntityRecognizer(nlp.vocab)
ner.from_disk("/path/to/ner")
Name Type Description
path unicode / Path A path to a directory. Paths may be either strings or Path-like objects.
exclude list String names of serialization fields to exclude.
RETURNS EntityRecognizer The modified EntityRecognizer object.

EntityRecognizer.to_bytes

Example

ner = EntityRecognizer(nlp.vocab)
ner_bytes = ner.to_bytes()

Serialize the pipe to a bytestring.

Name Type Description
exclude list String names of serialization fields to exclude.
RETURNS bytes The serialized form of the EntityRecognizer object.

EntityRecognizer.from_bytes

Load the pipe from a bytestring. Modifies the object in place and returns it.

Example

ner_bytes = ner.to_bytes()
ner = EntityRecognizer(nlp.vocab)
ner.from_bytes(ner_bytes)
Name Type Description
bytes_data bytes The data to load from.
exclude list String names of serialization fields to exclude.
RETURNS EntityRecognizer The EntityRecognizer object.

EntityRecognizer.labels

The labels currently added to the component.

Example

ner.add_label("MY_LABEL")
assert "MY_LABEL" in ner.labels
Name Type Description
RETURNS tuple The labels added to the component.

Serialization fields

During serialization, spaCy will export several data fields used to restore different aspects of the object. If needed, you can exclude them from serialization by passing in the string names via the exclude argument.

Example

data = ner.to_disk("/path", exclude=["vocab"])
Name Description
vocab The shared Vocab.
cfg The config file. You usually don't want to exclude this.
model The binary model data. You usually don't want to exclude this.