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170 lines
5.7 KiB
Cython
170 lines
5.7 KiB
Cython
# cython: profile=True
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from __future__ import print_function
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from __future__ import unicode_literals
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from __future__ import division
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from os import path
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import os
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import shutil
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import random
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import json
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import cython
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from .context cimport fill_context
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from .context cimport N_FIELDS
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from thinc.features cimport ConjFeat
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NULL_TAG = 0
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def setup_model_dir(tag_type, tag_names, templates, model_dir):
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if path.exists(model_dir):
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shutil.rmtree(model_dir)
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os.mkdir(model_dir)
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config = {
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'tag_type': tag_type,
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'templates': templates,
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'tag_names': tag_names,
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}
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with open(path.join(model_dir, 'config.json'), 'w') as file_:
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json.dump(config, file_)
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def train(train_sents, model_dir, nr_iter=10):
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cdef Tokens tokens
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tagger = Tagger(model_dir)
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for _ in range(nr_iter):
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n_corr = 0
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total = 0
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for tokens, golds in train_sents:
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assert len(tokens) == len(golds), [t.string for t in tokens]
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for i in range(tokens.length):
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if tagger.tag_type == POS:
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gold = _get_gold_pos(i, golds, tokens.pos)
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elif tagger.tag_type == ENTITY:
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gold = _get_gold_ner(i, golds, tokens.ner)
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guess = tagger.predict(i, tokens)
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tokens.set_tag(i, tagger.tag_type, guess)
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if gold is not None:
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tagger.tell_answer(gold)
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total += 1
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n_corr += guess in gold
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#print('%s\t%d\t%d' % (tokens[i].string, guess, gold))
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print('%.4f' % ((n_corr / total) * 100))
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random.shuffle(train_sents)
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tagger.model.end_training()
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tagger.model.dump(path.join(model_dir, 'model'))
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cdef object _get_gold_pos(i, golds, int* pred):
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if golds[i] == 0:
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return None
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else:
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return [golds[i]]
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cdef object _get_gold_ner(i, golds, int* ner):
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if golds[i] == 0:
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return None
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else:
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return [golds[i]]
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def evaluate(tagger, sents):
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n_corr = 0
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total = 0
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for tokens, golds in sents:
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for i, gold in enumerate(golds):
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guess = tagger.predict(i, tokens)
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tokens.set_tag(i, tagger.tag_type, guess)
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if gold != NULL_TAG:
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total += 1
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n_corr += guess == gold
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return n_corr / total
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cdef class Tagger:
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"""Assign part-of-speech, named entity or supersense tags, using greedy
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decoding. The tagger reads its model and configuration from disk.
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"""
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def __init__(self, model_dir):
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self.mem = Pool()
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cfg = json.load(open(path.join(model_dir, 'config.json')))
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templates = cfg['templates']
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self.tag_names = cfg['tag_names']
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self.tag_type = cfg['tag_type']
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self.extractor = Extractor(templates, [ConjFeat] * len(templates))
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self.model = LinearModel(len(self.tag_names))
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if path.exists(path.join(model_dir, 'model')):
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self.model.load(path.join(model_dir, 'model'))
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self._context = <atom_t*>self.mem.alloc(N_FIELDS, sizeof(atom_t))
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self._feats = <feat_t*>self.mem.alloc(self.extractor.n+1, sizeof(feat_t))
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self._values = <weight_t*>self.mem.alloc(self.extractor.n+1, sizeof(weight_t))
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self._scores = <weight_t*>self.mem.alloc(self.model.nr_class, sizeof(weight_t))
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self._guess = NULL_TAG
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cpdef int set_tags(self, Tokens tokens) except -1:
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"""Assign tags to a Tokens object.
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>>> tokens = EN.tokenize(u'An example sentence.')
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>>> assert tokens[0].pos == 'NO_TAG'
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>>> EN.pos_tagger.set_tags(tokens)
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>>> assert tokens[0].pos == 'DT'
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"""
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cdef int i
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for i in range(tokens.length):
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tokens.set_tag(i, self.tag_type, self.predict(i, tokens))
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cpdef class_t predict(self, int i, Tokens tokens) except 0:
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"""Predict the tag of tokens[i]. The tagger remembers the features and
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prediction, in case you later call tell_answer.
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>>> tokens = EN.tokenize(u'An example sentence.')
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>>> tag = EN.pos_tagger.predict(0, tokens)
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>>> assert tag == EN.pos_tagger.tag_id('DT') == 5
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"""
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fill_context(self._context, i, tokens)
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self.extractor.extract(self._feats, self._values, self._context, NULL)
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self._guess = self.model.score(self._scores, self._feats, self._values)
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return self._guess
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cpdef int tell_answer(self, list golds) except -1:
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"""Provide the correct tag for the word the tagger was last asked to predict.
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During Tagger.predict, the tagger remembers the features and prediction
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for the example. These are used to calculate a weight update given the
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correct label.
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>>> tokens = EN.tokenize('An example sentence.')
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>>> guess = EN.pos_tagger.predict(1, tokens)
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>>> JJ = EN.pos_tagger.tag_id('JJ')
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>>> JJ
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7
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>>> EN.pos_tagger.tell_answer(JJ)
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"""
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cdef class_t guess = self._guess
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if guess in golds:
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self.model.update({})
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return 0
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best_gold = golds[0]
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best_score = self._scores[best_gold-1]
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for gold in golds[1:]:
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if self._scores[gold-1] > best_gold:
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best_score = self._scores[best_gold-1]
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best_gold = gold
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counts = {guess: {}, best_gold: {}}
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self.extractor.count(counts[best_gold], self._feats, 1)
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self.extractor.count(counts[guess], self._feats, -1)
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self.model.update(counts)
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def tag_id(self, object tag_name):
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"""Encode tag_name into a tag ID integer."""
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tag_id = self.tag_names.index(tag_name)
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if tag_id == -1:
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tag_id = len(self.tag_names)
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self.tag_names.append(tag_name)
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return tag_id
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