mirror of https://github.com/explosion/spaCy.git
92 lines
3.4 KiB
Cython
92 lines
3.4 KiB
Cython
from os import path
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from .lemmatizer import Lemmatizer
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try:
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import ujson as json
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except ImportError:
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import json
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from .parts_of_speech import UNIV_POS_NAMES
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from .parts_of_speech cimport ADJ, VERB, NOUN
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cdef class Morphology:
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def __init__(self, StringStore string_store, tag_map, lemmatizer):
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self.mem = Pool()
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self.strings = string_store
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self.lemmatizer = lemmatizer
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self.n_tags = len(tag_map) + 1
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self.tag_names = tuple(sorted(tag_map.keys()))
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self.reverse_index = {}
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self.rich_tags = <RichTagC*>self.mem.alloc(self.n_tags, sizeof(RichTagC))
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for i, (tag_str, props) in enumerate(sorted(tag_map.items())):
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self.rich_tags[i].id = i
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self.rich_tags[i].name = self.strings[tag_str]
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self.rich_tags[i].morph = 0
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self.rich_tags[i].pos = UNIV_POS_NAMES[props['pos'].upper()]
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self.reverse_index[self.rich_tags[i].name] = i
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self._cache = PreshMapArray(self.n_tags)
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cdef int assign_tag(self, TokenC* token, tag) except -1:
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cdef int tag_id
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if isinstance(tag, basestring):
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try:
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tag_id = self.reverse_index[self.strings[tag]]
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except KeyError:
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print tag
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raise
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else:
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tag_id = tag
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analysis = <MorphAnalysisC*>self._cache.get(tag_id, token.lex.orth)
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if analysis is NULL:
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analysis = <MorphAnalysisC*>self.mem.alloc(1, sizeof(MorphAnalysisC))
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analysis.tag = self.rich_tags[tag_id]
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analysis.lemma = self.lemmatize(analysis.tag.pos, token.lex.orth)
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self._cache.set(tag_id, token.lex.orth, analysis)
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token.lemma = analysis.lemma
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token.pos = analysis.tag.pos
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token.tag = analysis.tag.name
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token.morph = analysis.tag.morph
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cdef int assign_feature(self, uint64_t* morph, feature, value) except -1:
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pass
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def load_morph_exceptions(self, dict exc):
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# Map (form, pos) to (lemma, rich tag)
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cdef unicode pos_str
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cdef unicode form_str
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cdef unicode lemma_str
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cdef dict entries
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cdef dict props
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cdef int lemma
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cdef attr_t orth
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cdef int pos
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for tag_str, entries in exc.items():
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tag = self.strings[tag_str]
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rich_tag = self.rich_tags[self.reverse_index[tag]]
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for form_str, props in entries.items():
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cached = <MorphAnalysisC*>self.mem.alloc(1, sizeof(MorphAnalysisC))
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orth = self.strings[form_str]
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for name_str, value_str in props.items():
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if name_str == 'L':
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cached.lemma = self.strings[value_str]
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else:
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self.assign_feature(&cached.tag.morph, name_str, value_str)
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if cached.lemma == 0:
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cached.lemma = self.lemmatize(rich_tag.pos, orth)
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self._cache.set(rich_tag.pos, orth, <void*>cached)
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def lemmatize(self, const univ_pos_t pos, attr_t orth):
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if self.lemmatizer is None:
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return orth
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cdef unicode py_string = self.strings[orth]
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if pos != NOUN and pos != VERB and pos != ADJ:
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return orth
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cdef set lemma_strings
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cdef unicode lemma_string
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lemma_strings = self.lemmatizer(py_string, pos)
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lemma_string = sorted(lemma_strings)[0]
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lemma = self.strings[lemma_string]
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return lemma
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