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130 lines
5.2 KiB
Plaintext
130 lines
5.2 KiB
Plaintext
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//- 💫 DOCS > USAGE > LINGUISTIC FEATURES > SENTENCE SEGMENTATION
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p
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| A #[+api("doc") #[code Doc]] object's sentences are available via the
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| #[code Doc.sents] property. Unlike other libraries, spaCy uses the
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| dependency parse to determine sentence boundaries. This is usually more
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| accurate than a rule-based approach, but it also means you'll need a
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| #[strong statistical model] and accurate predictions. If your
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| texts are closer to general-purpose news or web text, this should work
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| well out-of-the-box. For social media or conversational text that
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| doesn't follow the same rules, your application may benefit from a custom
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| rule-based implementation. You can either plug a rule-based component
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| into your #[+a("/usage/processing-pipelines") processing pipeline] or use
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| the #[code SentenceSegmenter] component with a custom stategy.
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+h(3, "sbd-parser") Default: Using the dependency parse
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+tag-model("dependency parser")
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p
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| To view a #[code Doc]'s sentences, you can iterate over the
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| #[code Doc.sents], a generator that yields
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| #[+api("span") #[code Span]] objects.
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+code-exec.
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import spacy
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nlp = spacy.load('en_core_web_sm')
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doc = nlp(u"This is a sentence. This is another sentence.")
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for sent in doc.sents:
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print(sent.text)
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+h(3, "sbd-manual") Setting boundaries manually
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p
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| spaCy's dependency parser respects already set boundaries, so you can
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| preprocess your #[code Doc] using custom rules #[code before] it's
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| parsed. This can be done by adding a
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| #[+a("/usage/processing-pipelines") custom pipeline component]. Depending
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| on your text, this may also improve accuracy, since the parser is
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| constrained to predict parses consistent with the sentence boundaries.
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+infobox("Important note", "⚠️")
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| To prevent inconsitent state, you can only set boundaries #[em before] a
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| document is parsed (and #[code Doc.is_parsed] is #[code False]). To
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| ensure that your component is added in the right place, you can set
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| #[code before='parser'] or #[code first=True] when adding it to the
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| pipeline using #[+api("language#add_pipe") #[code nlp.add_pipe]].
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p
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| Here's an example of a component that implements a pre-processing rule
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| for splitting on #[code '...'] tokens. The component is added before
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| the parser, which is then used to further segment the text. This
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| approach can be useful if you want to implement #[em additional] rules
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| specific to your data, while still being able to take advantage of
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| dependency-based sentence segmentation.
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+code-exec.
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import spacy
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text = u"this is a sentence...hello...and another sentence."
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nlp = spacy.load('en_core_web_sm')
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doc = nlp(text)
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print('Before:', [sent.text for sent in doc.sents])
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def set_custom_boundaries(doc):
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for token in doc[:-1]:
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if token.text == '...':
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doc[token.i+1].is_sent_start = True
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return doc
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nlp.add_pipe(set_custom_boundaries, before='parser')
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doc = nlp(text)
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print('After:', [sent.text for sent in doc.sents])
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+h(3, "sbd-component") Rule-based pipeline component
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p
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| The #[code sentencizer] component is a
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| #[+a("/usage/processing-pipelines") pipeline component] that splits
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| sentences on punctuation like #[code .], #[code !] or #[code ?].
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| You can plug it into your pipeline if you only need sentence boundaries
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| without the dependency parse. Note that #[code Doc.sents] will
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| #[strong raise an error] if no sentence boundaries are set.
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+code-exec.
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import spacy
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from spacy.lang.en import English
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nlp = English() # just the language with no model
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sbd = nlp.create_pipe('sentencizer') # or: nlp.create_pipe('sbd')
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nlp.add_pipe(sbd)
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doc = nlp(u"This is a sentence. This is another sentence.")
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for sent in doc.sents:
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print(sent.text)
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+h(3, "sbd-custom") Custom rule-based strategy
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p
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| If you want to implement your own strategy that differs from the default
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| rule-based approach of splitting on sentences, you can also instantiate
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| the #[code SentenceSegmenter] directly and pass in your own strategy.
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| The strategy should be a function that takes a #[code Doc] object and
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| yields a #[code Span] for each sentence. Here's an example of a custom
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| segmentation strategy for splitting on newlines only:
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+code-exec.
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from spacy.lang.en import English
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from spacy.pipeline import SentenceSegmenter
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def split_on_newlines(doc):
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start = 0
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seen_newline = False
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for word in doc:
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if seen_newline and not word.is_space:
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yield doc[start:word.i]
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start = word.i
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seen_newline = False
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elif word.text == '\n':
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seen_newline = True
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if start < len(doc):
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yield doc[start:len(doc)]
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nlp = English() # just the language with no model
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sbd = SentenceSegmenter(nlp.vocab, strategy=split_on_newlines)
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nlp.add_pipe(sbd)
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doc = nlp(u"This is a sentence\n\nThis is another sentence\nAnd more")
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for sent in doc.sents:
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print([token.text for token in sent])
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