Nagisa is a python module for Japanese word segmentation/POS-tagging.
It is designed to be a simple and easy-to-use tool.
This tool has the following features.
- Based on recurrent neural networks.
- The word segmentation model uses character- and word-level features [池田+].
- The POS-tagging model uses tag dictionary information [Inoue+].
For more details refer to the following links.
- The stop words for nagisa are available here.
- The presentation slide at PyCon JP (2022) is available here.
- The article in Japanese is available here.
- The documentation is available here.
You can install nagisa using pip:
pip install nagisa
Supported Platforms
- Linux: Python 3.6 - 3.13
- macOS (Intel, M1, M2): Python 3.9 - 3.13
- Windows: Python 3.6 - 3.8 (64-bit)
- Windows users are encouraged to use WSL.
Sample of word segmentation and POS-tagging for Japanese.
import nagisa
text = 'Pythonで簡単に使えるツールです'
words = nagisa.tagging(text)
print(words)
#=> Python/名詞 で/助詞 簡単/形状詞 に/助動詞 使える/動詞 ツール/名詞 です/助動詞
# Get a list of words
print(words.words)
#=> ['Python', 'で', '簡単', 'に', '使える', 'ツール', 'です']
# Get a list of POS-tags
print(words.postags)
#=> ['名詞', '助詞', '形状詞', '助動詞', '動詞', '名詞', '助動詞']
Filter and extarct words by the specific POS tags.
import nagisa
# Filter the words of the specific POS tags.
words = nagisa.filter(text, filter_postags=['助詞', '助動詞'])
print(words)
#=> Python/名詞 簡単/形状詞 使える/動詞 ツール/名詞
# Extarct only nouns.
words = nagisa.extract(text, extract_postags=['名詞'])
print(words)
#=> Python/名詞 ツール/名詞
# This is a list of available POS-tags in nagisa.
print(nagisa.tagger.postags)
#=> ['補助記号', '名詞', ... , 'URL']
Add the user dictionary in easy way.
import nagisa
# default
text = "3月に見た「3月のライオン」"
print(nagisa.tagging(text))
#=> 3/名詞 月/名詞 に/助詞 見/動詞 た/助動詞 「/補助記号 3/名詞 月/名詞 の/助詞 ライオン/名詞 」/補助記号
# If a word ("3月のライオン") is included in the single_word_list, it is recognized as a single word.
new_tagger = nagisa.Tagger(single_word_list=['3月のライオン'])
print(new_tagger.tagging(text))
#=> 3/名詞 月/名詞 に/助詞 見/動詞 た/助動詞 「/補助記号 3月のライオン/名詞 」/補助記号
Nagisa provides a simple train method for a joint word segmentation and sequence labeling (e.g, POS-tagging, NER) model.
The format of the train/dev/test files is tsv.
Each line is word
and tag
and one line is represented by word
\t(tab) tag
.
Note that you put EOS between sentences.
Refer to sample datasets and tutorial (Train a model for Universal Dependencies).
$ cat sample.train
唯一 NOUN
の ADP
趣味 NOU
は ADP
料理 NOUN
EOS
とても ADV
おいしかっ ADJ
た AUX
です AUX
。 PUNCT
EOS
ドル NOUN
は ADP
主要 ADJ
通貨 NOUN
EOS
import nagisa
# After finish training, save the three model files (*.vocabs, *.params, *.hp).
nagisa.fit(train_file="sample.train", dev_file="sample.dev", test_file="sample.test", model_name="sample")
# Build the tagger by loading the trained model files.
sample_tagger = nagisa.Tagger(vocabs='sample.vocabs', params='sample.params', hp='sample.hp')
text = "福岡・博多の観光情報"
words = sample_tagger.tagging(text)
print(words)
#> 福岡/PROPN ・/SYM 博多/PROPN の/ADP 観光/NOUN 情報/NOUN