mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-11 04:08:09 +03:00
247 lines
7.8 KiB
Python
247 lines
7.8 KiB
Python
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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import pathlib
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import plac
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import random
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from collections import Counter
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import numpy as np
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import os
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from collections import defaultdict
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from itertools import count
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if os.environ.get('DYNET_GPU') == '1':
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import _gdynet as dynet
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from _gdynet import cg
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else:
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import dynet
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from dynet import cg
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class Vocab:
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def __init__(self, w2i=None):
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if w2i is None: w2i = defaultdict(count(0).next)
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self.w2i = dict(w2i)
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self.i2w = {i:w for w,i in w2i.iteritems()}
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@classmethod
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def from_corpus(cls, corpus):
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w2i = defaultdict(count(0).next)
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for sent in corpus:
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[w2i[word] for word in sent]
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return Vocab(w2i)
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def size(self):
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return len(self.w2i.keys())
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def read_data(path):
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with path.open() as file_:
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sent = []
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for line in file_:
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line = line.strip().split()
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if not line:
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if sent:
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yield sent
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sent = []
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else:
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pieces = line
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w = pieces[1]
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pos = pieces[3]
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sent.append((w, pos))
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def get_vocab(train, test):
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words = []
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tags = []
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wc = Counter()
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for s in train:
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for w, p in s:
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words.append(w)
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tags.append(p)
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wc[w] += 1
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words.append("_UNK_")
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#words=[w if wc[w] > 1 else "_UNK_" for w in words]
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tags.append("_START_")
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for s in test:
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for w, p in s:
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words.append(w)
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vw = Vocab.from_corpus([words])
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vt = Vocab.from_corpus([tags])
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return words, tags, wc, vw, vt
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class BiTagger(object):
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def __init__(self, vw, vt, nwords, ntags):
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self.vw = vw
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self.vt = vt
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self.nwords = nwords
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self.ntags = ntags
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self.UNK = self.vw.w2i["_UNK_"]
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self._model = dynet.Model()
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self._sgd = dynet.SimpleSGDTrainer(self._model)
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self._E = self._model.add_lookup_parameters((self.nwords, 128))
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self._p_t1 = self._model.add_lookup_parameters((self.ntags, 30))
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self._pH = self._model.add_parameters((32, 50*2))
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self._pO = self._model.add_parameters((self.ntags, 32))
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self._fwd_lstm = dynet.LSTMBuilder(1, 128, 50, self._model)
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self._bwd_lstm = dynet.LSTMBuilder(1, 128, 50, self._model)
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self._words_batch = []
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self._tags_batch = []
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self._minibatch_size = 32
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def __call__(self, words):
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dynet.renew_cg()
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word_ids = [self.vw.w2i.get(w, self.UNK) for w in words]
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wembs = [self._E[w] for w in word_ids]
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f_state = self._fwd_lstm.initial_state()
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b_state = self._bwd_lstm.initial_state()
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fw = [x.output() for x in f_state.add_inputs(wembs)]
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bw = [x.output() for x in b_state.add_inputs(reversed(wembs))]
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H = dynet.parameter(self._pH)
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O = dynet.parameter(self._pO)
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tags = []
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for i, (f, b) in enumerate(zip(fw, reversed(bw))):
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r_t = O * (dynet.tanh(H * dynet.concatenate([f, b])))
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out = dynet.softmax(r_t)
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tags.append(self.vt.i2w[np.argmax(out.npvalue())])
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return tags
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def predict_batch(self, words_batch):
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dynet.renew_cg()
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length = max(len(words) for words in words_batch)
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word_ids = np.zeros((length, len(words_batch)), dtype='int32')
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for j, words in enumerate(words_batch):
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for i, word in enumerate(words):
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word_ids[i, j] = self.vw.w2i.get(word, self.UNK)
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wembs = [dynet.lookup_batch(self._E, word_ids[i]) for i in range(length)]
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f_state = self._fwd_lstm.initial_state()
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b_state = self._bwd_lstm.initial_state()
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fw = [x.output() for x in f_state.add_inputs(wembs)]
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bw = [x.output() for x in b_state.add_inputs(reversed(wembs))]
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H = dynet.parameter(self._pH)
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O = dynet.parameter(self._pO)
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tags_batch = [[] for _ in range(len(words_batch))]
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for i, (f, b) in enumerate(zip(fw, reversed(bw))):
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r_t = O * (dynet.tanh(H * dynet.concatenate([f, b])))
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out = dynet.softmax(r_t).npvalue()
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for j in range(len(words_batch)):
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tags_batch[j].append(self.vt.i2w[np.argmax(out.T[j])])
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return tags_batch
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def pipe(self, sentences):
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batch = []
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for words in sentences:
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batch.append(words)
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if len(batch) == self._minibatch_size:
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tags_batch = self.predict_batch(batch)
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for words, tags in zip(batch, tags_batch):
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yield tags
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batch = []
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def update(self, words, tags):
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self._words_batch.append(words)
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self._tags_batch.append(tags)
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if len(self._words_batch) == self._minibatch_size:
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loss = self.update_batch(self._words_batch, self._tags_batch)
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self._words_batch = []
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self._tags_batch = []
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else:
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loss = 0
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return loss
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def update_batch(self, words_batch, tags_batch):
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dynet.renew_cg()
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length = max(len(words) for words in words_batch)
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word_ids = np.zeros((length, len(words_batch)), dtype='int32')
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for j, words in enumerate(words_batch):
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for i, word in enumerate(words):
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word_ids[i, j] = self.vw.w2i.get(word, self.UNK)
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tag_ids = np.zeros((length, len(words_batch)), dtype='int32')
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for j, tags in enumerate(tags_batch):
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for i, tag in enumerate(tags):
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tag_ids[i, j] = self.vt.w2i.get(tag, self.UNK)
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wembs = [dynet.lookup_batch(self._E, word_ids[i]) for i in range(length)]
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wembs = [dynet.noise(we, 0.1) for we in wembs]
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f_state = self._fwd_lstm.initial_state()
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b_state = self._bwd_lstm.initial_state()
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fw = [x.output() for x in f_state.add_inputs(wembs)]
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bw = [x.output() for x in b_state.add_inputs(reversed(wembs))]
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H = dynet.parameter(self._pH)
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O = dynet.parameter(self._pO)
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errs = []
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for i, (f, b) in enumerate(zip(fw, reversed(bw))):
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f_b = dynet.concatenate([f,b])
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r_t = O * (dynet.tanh(H * f_b))
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err = dynet.pickneglogsoftmax_batch(r_t, tag_ids[i])
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errs.append(dynet.sum_batches(err))
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sum_errs = dynet.esum(errs)
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squared = -sum_errs # * sum_errs
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losses = sum_errs.scalar_value()
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sum_errs.backward()
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self._sgd.update()
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return losses
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def main(train_loc, dev_loc, model_dir):
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train_loc = pathlib.Path(train_loc)
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dev_loc = pathlib.Path(dev_loc)
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train = list(read_data((train_loc)))
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test = list(read_data(dev_loc))
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words, tags, wc, vw, vt = get_vocab(train, test)
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UNK = vw.w2i["_UNK_"]
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nwords = vw.size()
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ntags = vt.size()
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tagger = BiTagger(vw, vt, nwords, ntags)
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tagged = loss = 0
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for ITER in xrange(1):
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random.shuffle(train)
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for i, s in enumerate(train,1):
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if i % 5000 == 0:
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tagger._sgd.status()
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print(loss / tagged)
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loss = 0
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tagged = 0
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if i % 10000 == 0:
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good = bad = 0.0
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word_sents = [[w for w, t in sent] for sent in test]
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gold_sents = [[t for w, t in sent] for sent in test]
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for words, tags, golds in zip(words, tagger.pipe(words), gold_sents):
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for go, gu in zip(golds, tags):
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if go == gu:
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good += 1
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else:
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bad += 1
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print(good / (good+bad))
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loss += tagger.update([w for w, t in s], [t for w, t in s])
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tagged += len(s)
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if __name__ == '__main__':
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plac.call(main)
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