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132 lines
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132 lines
6.0 KiB
Plaintext
//- 💫 DOCS > USAGE > TRAINING > NER
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p
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| All #[+a("/models") spaCy models] support online learning, so
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| you can update a pre-trained model with new examples. To update the
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| model, you first need to create an instance of
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| #[+api("goldparse") #[code GoldParse]], with the entity labels
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| you want to learn. You'll usually need to provide many examples to
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| meaningfully improve the system — a few hundred is a good start, although
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| more is better.
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p
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| You should avoid iterating over the same few examples multiple times, or
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| the model is likely to "forget" how to annotate other examples. If you
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| iterate over the same few examples, you're effectively changing the loss
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| function. The optimizer will find a way to minimize the loss on your
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| examples, without regard for the consequences on the examples it's no
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| longer paying attention to. One way to avoid this
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| #[+a("https://explosion.ai/blog/pseudo-rehearsal-catastrophic-forgetting", true) "catastrophic forgetting" problem]
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| is to "remind"
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| the model of other examples by augmenting your annotations with sentences
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| annotated with entities automatically recognised by the original model.
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| Ultimately, this is an empirical process: you'll need to
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| #[strong experiment on your own data] to find a solution that works best
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| for you.
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+h(3, "example-train-ner") Updating the Named Entity Recognizer
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p
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| This example shows how to update spaCy's entity recognizer
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| with your own examples, starting off with an existing, pre-trained
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| model, or from scratch using a blank #[code Language] class. To do
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| this, you'll need #[strong example texts] and the
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| #[strong character offsets] and #[strong labels] of each entity contained
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| in the texts.
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+github("spacy", "examples/training/train_ner.py", 500)
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+h(4) Step by step guide
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+list("numbers")
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+item
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| #[strong Reformat the training data] to match spaCy's
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| #[+a("/api/annotation#json-input") JSON format]. The built-in
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| #[+api("goldparse#biluo_tags_from_offsets") #[code biluo_tags_from_offsets]]
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| function can help you with this.
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+item
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| #[strong Load the model] you want to start with, or create an
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| #[strong empty model] using
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| #[+api("spacy#blank") #[code spacy.blank]] with the ID of your
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| language. If you're using a blank model, don't forget to add the
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| entity recognizer to the pipeline. If you're using an existing model,
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| make sure to disable all other pipeline components during training
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| using #[+api("language#disable_pipes") #[code nlp.disable_pipes]].
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| This way, you'll only be training the entity recognizer.
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+item
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| #[strong Shuffle and loop over] the examples and create a
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| #[code Doc] and #[code GoldParse] object for each example.
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+item
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| For each example, #[strong update the model]
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| by calling #[+api("language#update") #[code nlp.update]], which steps
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| through the words of the input. At each word, it makes a
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| #[strong prediction]. It then consults the annotations provided on the
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| #[code GoldParse] instance, to see whether it was
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| right. If it was wrong, it adjusts its weights so that the correct
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| action will score higher next time.
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+item
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| #[strong Save] the trained model using
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| #[+api("language#to_disk") #[code nlp.to_disk]].
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+item
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| #[strong Test] the model to make sure the entities in the training
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| data are recognised correctly.
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+h(3, "example-new-entity-type") Training an additional entity type
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p
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| This script shows how to add a new entity type #[code ANIMAL] to an
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| existing pre-trained NER model, or an empty #[code Language] class. To
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| keep the example short and simple, only a few sentences are
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| provided as examples. In practice, you'll need many more — a few hundred
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| would be a good start. You will also likely need to mix in examples of
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| other entity types, which might be obtained by running the entity
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| recognizer over unlabelled sentences, and adding their annotations to the
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| training set.
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+github("spacy", "examples/training/train_new_entity_type.py", 500)
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+h(4) Step by step guide
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+list("numbers")
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+item
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| Create #[code Doc] and #[code GoldParse] objects for
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| #[strong each example in your training data].
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+item
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| #[strong Load the model] you want to start with, or create an
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| #[strong empty model] using
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| #[+api("spacy#blank") #[code spacy.blank]] with the ID of your
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| language. If you're using a blank model, don't forget to add the
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| entity recognizer to the pipeline. If you're using an existing model,
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| make sure to disable all other pipeline components during training
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| using #[+api("language#disable_pipes") #[code nlp.disable_pipes]].
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| This way, you'll only be training the entity recognizer.
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+item
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| #[strong Add the new entity label] to the entity recognizer using the
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| #[+api("entityrecognizer#add_label") #[code add_label]] method. You
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| can access the entity recognizer in the pipeline via
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| #[code nlp.get_pipe('ner')].
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+item
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| #[strong Loop over] the examples and call
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| #[+api("language#update") #[code nlp.update]], which steps through
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| the words of the input. At each word, it makes a
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| #[strong prediction]. It then consults the annotations provided on the
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| #[code GoldParse] instance, to see whether it was right. If it was
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| wrong, it adjusts its weights so that the correct action will score
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| higher next time.
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+item
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| #[strong Save] the trained model using
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| #[+api("language#to_disk") #[code nlp.to_disk]].
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+item
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| #[strong Test] the model to make sure the new entity is recognised
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| correctly.
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