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* Port Japanese mecab tokenizer from v1 This brings the Mecab-based Japanese tokenization introduced in #1246 to spaCy v2. There isn't a JapaneseTagger implementation yet, but POS tag information from Mecab is stored in a token extension. A tag map is also included. As a reminder, Mecab is required because Universal Dependencies are based on Unidic tags, and Janome doesn't support Unidic. Things to check: 1. Is this the right way to use a token extension? 2. What's the right way to implement a JapaneseTagger? The approach in #1246 relied on `tag_from_strings` which is just gone now. I guess the best thing is to just try training spaCy's default Tagger? -POLM * Add tagging/make_doc and tests
46 lines
2.9 KiB
Python
46 lines
2.9 KiB
Python
# coding: utf-8
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from __future__ import unicode_literals
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import pytest
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TOKENIZER_TESTS = [
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("日本語だよ", ['日本', '語', 'だ', 'よ']),
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("東京タワーの近くに住んでいます。", ['東京', 'タワー', 'の', '近く', 'に', '住ん', 'で', 'い', 'ます', '。']),
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("吾輩は猫である。", ['吾輩', 'は', '猫', 'で', 'ある', '。']),
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("月に代わって、お仕置きよ!", ['月', 'に', '代わっ', 'て', '、', 'お', '仕置き', 'よ', '!']),
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("すもももももももものうち", ['すもも', 'も', 'もも', 'も', 'もも', 'の', 'うち'])
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]
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TAG_TESTS = [
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("日本語だよ", ['日本語だよ', '名詞-固有名詞-地名-国', '名詞-普通名詞-一般', '助動詞', '助詞-終助詞']),
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("東京タワーの近くに住んでいます。", ['名詞-固有名詞-地名-一般', '名詞-普通名詞-一般', '助詞-格助詞', '名詞-普通名詞-副詞可能', '助詞-格助詞', '動詞-一般', '助詞-接続助詞', '動詞-非自立可能', '助動詞', '補助記号-句点']),
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("吾輩は猫である。", ['代名詞', '助詞-係助詞', '名詞-普通名詞-一般', '助動詞', '動詞-非自立可能', '補助記号-句点']),
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("月に代わって、お仕置きよ!", ['名詞-普通名詞-助数詞可能', '助詞-格助詞', '動詞-一般', '助詞-接続助詞', '補助記号-読点', '接頭辞', '名詞-普通名詞-一般', '助詞-終助詞', '補助記号-句点 ']),
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("すもももももももものうち", ['名詞-普通名詞-一般', '助詞-係助詞', '名詞-普通名詞-一般', '助詞-係助詞', '名詞-普通名詞-一般', '助詞-格助詞', '名詞-普通名詞-副詞可能'])
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]
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POS_TESTS = [
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('日本語だよ', ['PROPN', 'NOUN', 'AUX', 'PART']),
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('東京タワーの近くに住んでいます。', ['PROPN', 'NOUN', 'ADP', 'NOUN', 'ADP', 'VERB', 'SCONJ', 'VERB', 'AUX', 'PUNCT']),
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('吾輩は猫である。', ['PRON', 'ADP', 'NOUN', 'AUX', 'VERB', 'PUNCT']),
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('月に代わって、お仕置きよ!', ['NOUN', 'ADP', 'VERB', 'SCONJ', 'PUNCT', 'NOUN', 'NOUN', 'PART', 'PUNCT']),
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('すもももももももものうち', ['NOUN', 'ADP', 'NOUN', 'ADP', 'NOUN', 'ADP', 'NOUN'])
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]
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@pytest.mark.parametrize('text,expected_tokens', TOKENIZER_TESTS)
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def test_japanese_tokenizer(ja_tokenizer, text, expected_tokens):
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tokens = [token.text for token in ja_tokenizer(text)]
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assert tokens == expected_tokens
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@pytest.mark.parametrize('text,expected_tags', TAG_TESTS)
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def test_japanese_tokenizer(ja_tokenizer, text, expected_tags):
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tags = [token.tag_ for token in ja_tokenizer(text)]
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assert tags == expected_tags
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@pytest.mark.parametrize('text,expected_pos', POS_TESTS)
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def test_japanese_tokenizer(ja_tokenizer, text, expected_pos):
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pos = [token.pos_ for token in ja_tokenizer(text)]
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assert pos == expected_pos
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