mirror of https://github.com/explosion/spaCy.git
510 lines
25 KiB
Plaintext
510 lines
25 KiB
Plaintext
---
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title: TextCategorizer
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tag: class
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source: spacy/pipeline/textcat.py
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version: 2
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teaser: 'Pipeline component for text classification'
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api_base_class: /api/pipe
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api_string_name: textcat
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api_trainable: true
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---
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The text categorizer predicts **categories over a whole document**. and comes in
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two flavors: `textcat` and `textcat_multilabel`. When you need to predict
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exactly one true label per document, use the `textcat` which has mutually
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exclusive labels. If you want to perform multi-label classification and predict
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zero, one or more true labels per document, use the `textcat_multilabel`
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component instead. For a binary classification task, you can use `textcat` with
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**two** labels or `textcat_multilabel` with **one** label.
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Both components are documented on this page.
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<Infobox title="Migration from v2" variant="warning">
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In spaCy v2, the `textcat` component could also perform **multi-label
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classification**, and even used this setting by default. Since v3.0, the
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component `textcat_multilabel` should be used for multi-label classification
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instead. The `textcat` component is now used for mutually exclusive classes
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only.
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</Infobox>
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## Assigned Attributes {id="assigned-attributes"}
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Predictions will be saved to `doc.cats` as a dictionary, where the key is the
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name of the category and the value is a score between 0 and 1 (inclusive). For
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`textcat` (exclusive categories), the scores will sum to 1, while for
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`textcat_multilabel` there is no particular guarantee about their sum. This also
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means that for `textcat`, missing values are equated to a value of 0 (i.e.
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`False`) and are counted as such towards the loss and scoring metrics. This is
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not the case for `textcat_multilabel`, where missing values in the gold standard
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data do not influence the loss or accuracy calculations.
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Note that when assigning values to create training data, the score of each
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category must be 0 or 1. Using other values, for example to create a document
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that is a little bit in category A and a little bit in category B, is not
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supported.
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| Location | Value |
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| ---------- | ------------------------------------- |
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| `Doc.cats` | Category scores. ~~Dict[str, float]~~ |
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## Config and implementation {id="config"}
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The default config is defined by the pipeline component factory and describes
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how the component should be configured. You can override its settings via the
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`config` argument on [`nlp.add_pipe`](/api/language#add_pipe) or in your
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[`config.cfg` for training](/usage/training#config). See the
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[model architectures](/api/architectures) documentation for details on the
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architectures and their arguments and hyperparameters.
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> #### Example (textcat)
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>
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> ```python
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> from spacy.pipeline.textcat import DEFAULT_SINGLE_TEXTCAT_MODEL
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> config = {
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> "model": DEFAULT_SINGLE_TEXTCAT_MODEL,
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> }
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> nlp.add_pipe("textcat", config=config)
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> ```
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> #### Example (textcat_multilabel)
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>
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> ```python
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> from spacy.pipeline.textcat_multilabel import DEFAULT_MULTI_TEXTCAT_MODEL
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> config = {
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> "threshold": 0.5,
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> "model": DEFAULT_MULTI_TEXTCAT_MODEL,
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> }
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> nlp.add_pipe("textcat_multilabel", config=config)
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> ```
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| Setting | Description |
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| ----------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------------- |
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| `threshold` | Cutoff to consider a prediction "positive", relevant for `textcat_multilabel` when calculating accuracy scores. ~~float~~ |
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| `model` | A model instance that predicts scores for each category. Defaults to [TextCatEnsemble](/api/architectures#TextCatEnsemble). ~~Model[List[Doc], List[Floats2d]]~~ |
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| `scorer` | The scoring method. Defaults to [`Scorer.score_cats`](/api/scorer#score_cats) for the attribute `"cats"`. ~~Optional[Callable]~~ |
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```python
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%%GITHUB_SPACY/spacy/pipeline/textcat.py
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```
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```python
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%%GITHUB_SPACY/spacy/pipeline/textcat_multilabel.py
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```
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## TextCategorizer.\_\_init\_\_ {id="init",tag="method"}
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> #### Example
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>
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> ```python
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> # Construction via add_pipe with default model
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> # Use 'textcat_multilabel' for multi-label classification
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> textcat = nlp.add_pipe("textcat")
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>
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> # Construction via add_pipe with custom model
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> config = {"model": {"@architectures": "my_textcat"}}
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> parser = nlp.add_pipe("textcat", config=config)
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>
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> # Construction from class
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> # Use 'MultiLabel_TextCategorizer' for multi-label classification
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> from spacy.pipeline import TextCategorizer
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> textcat = TextCategorizer(nlp.vocab, model, threshold=0.5)
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> ```
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Create a new pipeline instance. In your application, you would normally use a
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shortcut for this and instantiate the component using its string name and
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[`nlp.add_pipe`](/api/language#create_pipe).
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| Name | Description |
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| -------------- | -------------------------------------------------------------------------------------------------------------------------------- |
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| `vocab` | The shared vocabulary. ~~Vocab~~ |
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| `model` | The Thinc [`Model`](https://thinc.ai/docs/api-model) powering the pipeline component. ~~Model[List[Doc], List[Floats2d]]~~ |
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| `name` | String name of the component instance. Used to add entries to the `losses` during training. ~~str~~ |
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| _keyword-only_ | |
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| `threshold` | Cutoff to consider a prediction "positive", relevant for `textcat_multilabel` when calculating accuracy scores. ~~float~~ |
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| `scorer` | The scoring method. Defaults to [`Scorer.score_cats`](/api/scorer#score_cats) for the attribute `"cats"`. ~~Optional[Callable]~~ |
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## TextCategorizer.\_\_call\_\_ {id="call",tag="method"}
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Apply the pipe to one document. The document is modified in place, and returned.
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This usually happens under the hood when the `nlp` object is called on a text
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and all pipeline components are applied to the `Doc` in order. Both
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[`__call__`](/api/textcategorizer#call) and [`pipe`](/api/textcategorizer#pipe)
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delegate to the [`predict`](/api/textcategorizer#predict) and
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[`set_annotations`](/api/textcategorizer#set_annotations) methods.
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> #### Example
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>
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> ```python
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> doc = nlp("This is a sentence.")
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> textcat = nlp.add_pipe("textcat")
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> # This usually happens under the hood
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> processed = textcat(doc)
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> ```
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| Name | Description |
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| ----------- | -------------------------------- |
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| `doc` | The document to process. ~~Doc~~ |
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| **RETURNS** | The processed document. ~~Doc~~ |
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## TextCategorizer.pipe {id="pipe",tag="method"}
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Apply the pipe to a stream of documents. This usually happens under the hood
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when the `nlp` object is called on a text and all pipeline components are
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applied to the `Doc` in order. Both [`__call__`](/api/textcategorizer#call) and
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[`pipe`](/api/textcategorizer#pipe) delegate to the
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[`predict`](/api/textcategorizer#predict) and
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[`set_annotations`](/api/textcategorizer#set_annotations) methods.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> for doc in textcat.pipe(docs, batch_size=50):
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> pass
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------- |
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| `stream` | A stream of documents. ~~Iterable[Doc]~~ |
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| _keyword-only_ | |
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| `batch_size` | The number of documents to buffer. Defaults to `128`. ~~int~~ |
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| **YIELDS** | The processed documents in order. ~~Doc~~ |
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## TextCategorizer.initialize {id="initialize",tag="method",version="3"}
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Initialize the component for training. `get_examples` should be a function that
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returns an iterable of [`Example`](/api/example) objects. **At least one example
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should be supplied.** The data examples are used to **initialize the model** of
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the component and can either be the full training data or a representative
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sample. Initialization includes validating the network,
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[inferring missing shapes](https://thinc.ai/docs/usage-models#validation) and
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setting up the label scheme based on the data. This method is typically called
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by [`Language.initialize`](/api/language#initialize) and lets you customize
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arguments it receives via the
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[`[initialize.components]`](/api/data-formats#config-initialize) block in the
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config.
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<Infobox variant="warning" title="Changed in v3.0" id="begin_training">
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This method was previously called `begin_training`.
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</Infobox>
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> textcat.initialize(lambda: examples, nlp=nlp)
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> ```
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>
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> ```ini
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> ### config.cfg
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> [initialize.components.textcat]
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> positive_label = "POS"
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>
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> [initialize.components.textcat.labels]
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> @readers = "spacy.read_labels.v1"
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> path = "corpus/labels/textcat.json
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> ```
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| Name | Description |
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| ---------------- | ---------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- |
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| `get_examples` | Function that returns gold-standard annotations in the form of [`Example`](/api/example) objects. Must contain at least one `Example`. ~~Callable[[], Iterable[Example]]~~ |
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| _keyword-only_ | |
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| `nlp` | The current `nlp` object. Defaults to `None`. ~~Optional[Language]~~ |
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| `labels` | The label information to add to the component, as provided by the [`label_data`](#label_data) property after initialization. To generate a reusable JSON file from your data, you should run the [`init labels`](/api/cli#init-labels) command. If no labels are provided, the `get_examples` callback is used to extract the labels from the data, which may be a lot slower. ~~Optional[Iterable[str]]~~ |
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| `positive_label` | The positive label for a binary task with exclusive classes, `None` otherwise and by default. This parameter is only used during scoring. It is not available when using the `textcat_multilabel` component. ~~Optional[str]~~ |
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## TextCategorizer.predict {id="predict",tag="method"}
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Apply the component's model to a batch of [`Doc`](/api/doc) objects without
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modifying them.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> scores = textcat.predict([doc1, doc2])
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> ```
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| Name | Description |
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| ----------- | ------------------------------------------- |
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| `docs` | The documents to predict. ~~Iterable[Doc]~~ |
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| **RETURNS** | The model's prediction for each document. |
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## TextCategorizer.set_annotations {id="set_annotations",tag="method"}
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Modify a batch of [`Doc`](/api/doc) objects using pre-computed scores.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> scores = textcat.predict(docs)
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> textcat.set_annotations(docs, scores)
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> ```
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| Name | Description |
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| -------- | --------------------------------------------------------- |
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| `docs` | The documents to modify. ~~Iterable[Doc]~~ |
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| `scores` | The scores to set, produced by `TextCategorizer.predict`. |
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## TextCategorizer.update {id="update",tag="method"}
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Learn from a batch of [`Example`](/api/example) objects containing the
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predictions and gold-standard annotations, and update the component's model.
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Delegates to [`predict`](/api/textcategorizer#predict) and
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[`get_loss`](/api/textcategorizer#get_loss).
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> optimizer = nlp.initialize()
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> losses = textcat.update(examples, sgd=optimizer)
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------------------------------------ |
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| `examples` | A batch of [`Example`](/api/example) objects to learn from. ~~Iterable[Example]~~ |
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| _keyword-only_ | |
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| `drop` | The dropout rate. ~~float~~ |
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| `sgd` | An optimizer. Will be created via [`create_optimizer`](#create_optimizer) if not set. ~~Optional[Optimizer]~~ |
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| `losses` | Optional record of the loss during training. Updated using the component name as the key. ~~Optional[Dict[str, float]]~~ |
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| **RETURNS** | The updated `losses` dictionary. ~~Dict[str, float]~~ |
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## TextCategorizer.rehearse {id="rehearse",tag="method,experimental",version="3"}
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Perform a "rehearsal" update from a batch of data. Rehearsal updates teach the
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current model to make predictions similar to an initial model to try to address
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the "catastrophic forgetting" problem. This feature is experimental.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> optimizer = nlp.resume_training()
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> losses = textcat.rehearse(examples, sgd=optimizer)
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------------------------------------ |
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| `examples` | A batch of [`Example`](/api/example) objects to learn from. ~~Iterable[Example]~~ |
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| _keyword-only_ | |
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| `drop` | The dropout rate. ~~float~~ |
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| `sgd` | An optimizer. Will be created via [`create_optimizer`](#create_optimizer) if not set. ~~Optional[Optimizer]~~ |
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| `losses` | Optional record of the loss during training. Updated using the component name as the key. ~~Optional[Dict[str, float]]~~ |
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| **RETURNS** | The updated `losses` dictionary. ~~Dict[str, float]~~ |
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## TextCategorizer.get_loss {id="get_loss",tag="method"}
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Find the loss and gradient of loss for the batch of documents and their
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predicted scores.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> scores = textcat.predict([eg.predicted for eg in examples])
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> loss, d_loss = textcat.get_loss(examples, scores)
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> ```
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| Name | Description |
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| ----------- | --------------------------------------------------------------------------- |
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| `examples` | The batch of examples. ~~Iterable[Example]~~ |
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| `scores` | Scores representing the model's predictions. |
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| **RETURNS** | The loss and the gradient, i.e. `(loss, gradient)`. ~~Tuple[float, float]~~ |
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## TextCategorizer.score {id="score",tag="method",version="3"}
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Score a batch of examples.
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> #### Example
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>
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> ```python
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> scores = textcat.score(examples)
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> ```
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| Name | Description |
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| -------------- | -------------------------------------------------------------------------------------------------------------------- |
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| `examples` | The examples to score. ~~Iterable[Example]~~ |
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| _keyword-only_ | |
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| **RETURNS** | The scores, produced by [`Scorer.score_cats`](/api/scorer#score_cats). ~~Dict[str, Union[float, Dict[str, float]]]~~ |
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## TextCategorizer.create_optimizer {id="create_optimizer",tag="method"}
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Create an optimizer for the pipeline component.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> optimizer = textcat.create_optimizer()
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> ```
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| Name | Description |
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| ----------- | ---------------------------- |
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| **RETURNS** | The optimizer. ~~Optimizer~~ |
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## TextCategorizer.use_params {id="use_params",tag="method, contextmanager"}
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Modify the pipe's model to use the given parameter values.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> with textcat.use_params(optimizer.averages):
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> textcat.to_disk("/best_model")
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> ```
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| Name | Description |
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| -------- | -------------------------------------------------- |
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| `params` | The parameter values to use in the model. ~~dict~~ |
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## TextCategorizer.add_label {id="add_label",tag="method"}
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Add a new label to the pipe. Raises an error if the output dimension is already
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set, or if the model has already been fully [initialized](#initialize). Note
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that you don't have to call this method if you provide a **representative data
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sample** to the [`initialize`](#initialize) method. In this case, all labels
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found in the sample will be automatically added to the model, and the output
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dimension will be [inferred](/usage/layers-architectures#thinc-shape-inference)
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automatically.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> textcat.add_label("MY_LABEL")
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> ```
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| Name | Description |
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| ----------- | ----------------------------------------------------------- |
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| `label` | The label to add. ~~str~~ |
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| **RETURNS** | `0` if the label is already present, otherwise `1`. ~~int~~ |
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## TextCategorizer.to_disk {id="to_disk",tag="method"}
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Serialize the pipe to disk.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> textcat.to_disk("/path/to/textcat")
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> ```
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------------------------------------------------------ |
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| `path` | A path to a directory, which will be created if it doesn't exist. Paths may be either strings or `Path`-like objects. ~~Union[str, Path]~~ |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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## TextCategorizer.from_disk {id="from_disk",tag="method"}
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Load the pipe from disk. Modifies the object in place and returns it.
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> textcat.from_disk("/path/to/textcat")
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> ```
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| Name | Description |
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| -------------- | ----------------------------------------------------------------------------------------------- |
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| `path` | A path to a directory. Paths may be either strings or `Path`-like objects. ~~Union[str, Path]~~ |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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| **RETURNS** | The modified `TextCategorizer` object. ~~TextCategorizer~~ |
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## TextCategorizer.to_bytes {id="to_bytes",tag="method"}
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> #### Example
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>
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> ```python
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> textcat = nlp.add_pipe("textcat")
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> textcat_bytes = textcat.to_bytes()
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> ```
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Serialize the pipe to a bytestring.
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| Name | Description |
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| -------------- | ------------------------------------------------------------------------------------------- |
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| _keyword-only_ | |
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| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
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| **RETURNS** | The serialized form of the `TextCategorizer` object. ~~bytes~~ |
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## TextCategorizer.from_bytes {id="from_bytes",tag="method"}
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Load the pipe from a bytestring. Modifies the object in place and returns it.
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> #### Example
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>
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> ```python
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> textcat_bytes = textcat.to_bytes()
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> textcat = nlp.add_pipe("textcat")
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> textcat.from_bytes(textcat_bytes)
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> ```
|
|
|
|
| Name | Description |
|
|
| -------------- | ------------------------------------------------------------------------------------------- |
|
|
| `bytes_data` | The data to load from. ~~bytes~~ |
|
|
| _keyword-only_ | |
|
|
| `exclude` | String names of [serialization fields](#serialization-fields) to exclude. ~~Iterable[str]~~ |
|
|
| **RETURNS** | The `TextCategorizer` object. ~~TextCategorizer~~ |
|
|
|
|
## TextCategorizer.labels {id="labels",tag="property"}
|
|
|
|
The labels currently added to the component.
|
|
|
|
> #### Example
|
|
>
|
|
> ```python
|
|
> textcat.add_label("MY_LABEL")
|
|
> assert "MY_LABEL" in textcat.labels
|
|
> ```
|
|
|
|
| Name | Description |
|
|
| ----------- | ------------------------------------------------------ |
|
|
| **RETURNS** | The labels added to the component. ~~Tuple[str, ...]~~ |
|
|
|
|
## TextCategorizer.label_data {id="label_data",tag="property",version="3"}
|
|
|
|
The labels currently added to the component and their internal meta information.
|
|
This is the data generated by [`init labels`](/api/cli#init-labels) and used by
|
|
[`TextCategorizer.initialize`](/api/textcategorizer#initialize) to initialize
|
|
the model with a pre-defined label set.
|
|
|
|
> #### Example
|
|
>
|
|
> ```python
|
|
> labels = textcat.label_data
|
|
> textcat.initialize(lambda: [], nlp=nlp, labels=labels)
|
|
> ```
|
|
|
|
| Name | Description |
|
|
| ----------- | ---------------------------------------------------------- |
|
|
| **RETURNS** | The label data added to the component. ~~Tuple[str, ...]~~ |
|
|
|
|
## Serialization fields {id="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
|
|
>
|
|
> ```python
|
|
> data = textcat.to_disk("/path", exclude=["vocab"])
|
|
> ```
|
|
|
|
| Name | Description |
|
|
| ------- | -------------------------------------------------------------- |
|
|
| `vocab` | The shared [`Vocab`](/api/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. |
|