Awesome
What is Juman++
A new morphological analyser that considers semantic plausibility of word sequences by using a recurrent neural network language model (RNNLM). Version 2 has better accuracy and greatly (>250x) improved analysis speed than the original Juman++.
Installation
System Requirements
- OS: Linux, MacOS X or Windows.
- Compiler: C++14 compatible
- For example gcc 5.1+, clang 3.4+, MSVC 2017
- We test on GCC and clang on Linux/MacOS, mingw64-gcc and MSVC2017 on Windows
- CMake v3.1 or later
- For Ubuntu22.04, you need to install additional packages as follows:
sudo apt install libprotobuf-dev protobuf-compiler
Read this document for CentOS and RHEL derivatives or non-CMake alternatives.
Building from a package
Download the package from Releases
Important: The download should be around 300 MB. If it is not you have probably downloaded a source snapshot which does not contain a model.
$ tar xf jumanpp-<version>.tar.xz # decompress the package
$ cd jumanpp-<version> # move into the directory
$ mkdir bld # make a subdirectory for build
$ cd bld
$ cmake .. \
-DCMAKE_BUILD_TYPE=Release \ # you want to do this for performance
-DCMAKE_INSTALL_PREFIX=<prefix> # where to install Juman++
$ make install -j<parallelism>
Building from git
Important: Only the package distribution contains a pretrained model and can be used for analysis. The current git version is not compatible with the models of 2.0-rc1 and 2.0-rc2.
$ mkdir cmake-build-dir # CMake does not support in-source builds
$ cd cmake-build-dir
$ cmake ..
$ make # -j
Usage
Quick start
% echo "魅力がたっぷりと詰まっている" | jumanpp
魅力 みりょく 魅力 名詞 6 普通名詞 1 * 0 * 0 "代表表記:魅力/みりょく カテゴリ:抽象物"
が が が 助詞 9 格助詞 1 * 0 * 0 NIL
たっぷり たっぷり たっぷり 副詞 8 * 0 * 0 * 0 "自動認識"
と と と 助詞 9 格助詞 1 * 0 * 0 NIL
詰まって つまって 詰まる 動詞 2 * 0 子音動詞ラ行 10 タ系連用テ形 14 "代表表記:詰まる/つまる ドメイン:料理・食事 自他動詞:他:詰める/つめる"
いる いる いる 接尾辞 14 動詞性接尾辞 7 母音動詞 1 基本形 2 "代表表記:いる/いる"
EOS
Main options
usage: jumanpp [options]
-s, --specifics lattice format output (unsigned int [=5])
--beam <int> set local beam width used in analysis (unsigned int [=5])
-v, --version print version
-h, --help print this message
--model <file> specify a model location
Use --help
to see more options.
Input
JUMAN++ can handle only utf-8 encoded text as an input.
Lines beginning with #
will be interpreted as comments.
Training Jumandic Model
A set of scripts for training Jumandic model is available in this repository. It is possible to modify the system dictionary to add other entries to the trained model.
Attention: You need to have access to Mainichi Shinbun for Year 1995 to be able to use Kyoto Univeristy corpus for training.
Other
DEMO
You can play around our web demo which displays a subset of the whole lattice. The demo still uses v1 but, it will be updated to v2 soon.
Extracting diffs caused by beam configurations
You can see sentences in which two different beam configurations produce different analyses.
A src/jumandic/jpp_jumandic_pathdiff
binary (source)
(relative to a compilation root) does it.
The only Jumandic-specific thing here is the usage of code-generated linear model inference.
Use the binary as jpp_jumandic_pathdiff <model> <input> > <output>
.
Outputs would be in the partial annotation format with a full beam results being the actual tags and trimmed beam results being written as comments.
Example:
# scores: -0.602687 -1.20004
# 子がい pos:名詞 subpos:普通名詞 <------- trimmed beam result
# S-ID:w201007-0080605751-6 COUNT:2
熊本選抜にはマリノス、アントラーズのユースに行く
子 pos:名詞 subpos:普通名詞 <------- full beam result
が pos:助詞 subpos:格助詞
い baseform:いる conjtype:母音動詞 pos:動詞 conjform:基本連用形
ます
Partial Annotation Tool
We also have a partial annotation tool. Please see https://github.com/eiennohito/nlp-tools-demo for details.
Performance Notes
To get the best performance, you need to build with extended instruction sets.
If you are planning to use Juman++ only locally,
specify -DCMAKE_CXX_FLAGS="-march=native"
.
Works best on Intel Haswell and newer processors (because of FMA and BMI instruction set extensions).
Using Juman++ to create your own Morphological Analyzer
Juman++ is a general tool. It does not depend on Jumandic or Japanese Language (albeit there are some Japanese-specific functionality). See this tutorial project which shows how to implement a something similar to a T9 text input for the case when there are no word boundaries in the input text.
Publications and Slides
-
About the model itself: Morphological Analysis for Unsegmented Languages using Recurrent Neural Network Language Model. Hajime Morita, Daisuke Kawahara, Sadao Kurohashi. EMNLP 2015 link, bibtex.
-
V2 Improvments: Juman++ v2: A Practical and Modern Morphological Analyzer. Arseny Tolmachev and Kurohashi Sadao. The Proceedings of the Twenty-fourth Annual Meeting of the Association for Natural Language Processing. March 2018, Okayama, Japan. (pdf, slides)
-
Morphological Analysis Workshop in ANLP2018 Slides: 形態素解析システムJuman++. 河原 大輔, Arseny Tolmachev. (in Japanese) slides.
-
Juman++: A Morphological Analysis Toolkit for Scriptio Continua. Arseny Tolmachev, Daisuke Kawahara and Sadao Kurohashi. EMNLP 2018, Brussels. pdf, poster, bibtex.
-
Design and Structure of The Juman++ Morphological Analyzer Toolkit. Arseny Tolmachev, Daisuke Kawahara, Sadao Kurohashi. Journal of Natural Language Processing, (paper, bibtex).
If you use Juman++ V1 in academic setting, then please cite the first work (EMNLP2015). If you use Juman++ V2, then please cite both the first and the fourth (EMNLP2018) papers.
Authors
- Arseny Tolmachev <arseny at kotonoha.ws>
- Hajime Morita <hmorita at nlp.ist.i.kyoto-u.ac.jp>
- Daisuke Kawahara <dk at i.kyoto-u.ac.jp>
- Sadao Kurohashi <kuro at i.kyoto-u.ac.jp>
Acknowledgement
The list of all libraries used by JUMAN++ is here.
Notice
This is a branch for the Juman++ rewrite. The original version lives in the legacy branch.