Skip to main content

A library for standardizing terms with spelling variations using a synonym dictionary.

Project description

Python License PyPI Downloads

yurenizer

This is a Japanese text normalizer that resolves spelling inconsistencies.

Japanese README is Here.(日本語のREADMEはこちら)
https://github.com/sea-turt1e/yurenizer/blob/main/README_ja.md

Overview

yurenizer is a tool for detecting and unifying variations in Japanese text notation.
For example, it can unify variations like "パソコン" (pasokon), "パーソナル・コンピュータ" (personal computer), and "パーソナルコンピュータ" into "パーソナルコンピューター".
These rules follow the Sudachi Synonym Dictionary.

web-based Demo

You can try the web-based demo here.
yurenizer Web-demo

Installation

pip install yurenizer

Download Synonym Dictionary

curl -L -o /path/to/synonyms.txt https://raw.githubusercontent.com/WorksApplications/SudachiDict/refs/heads/develop/src/main/text/synonyms.txt

Usage

Quick Start

from yurenizer import SynonymNormalizer, NormalizerConfig
normalizer = SynonymNormalizer(synonym_file_path="path/to/synonym_file_path")
text = "「パソコン」は「パーソナルコンピュータ」の「synonym」で、「パーソナル・コンピュータ」と表記することもあります。"
print(normalizer.normalize(text))
# Output: 「パーソナルコンピューター」は「パーソナルコンピューター」の「シノニム」で、「パーソナルコンピューター」と表記することもあります。

Customizing Settings

You can control normalization by specifying NormalizerConfig as an argument to the normalize function.

Example with Custom Settings

from yurenizer import SynonymNormalizer, NormalizerConfig
normalizer = SynonymNormalizer(synonym_file_path="path/to/synonym_file_path")
text = "「東日本旅客鉄道」は「JR東」や「JR-East」とも呼ばれます"
config = NormalizerConfig(
            taigen=True, 
            yougen=False,
            expansion="from_another", 
            unify_level="lexeme",
            other_language=False,
            alias=False,
            old_name=False,
            misuse=False,
            alphabetic_abbreviation=True, # Normalize only alphabetic abbreviations
            non_alphabetic_abbreviation=False,
            alphabet=False,
            orthographic_variation=False,
            misspelling=False
        )
print(f"Output: {normalizer.normalize(text, config)}")
# Output: 「東日本旅客鉄道」は「JR東」や「東日本旅客鉄道」とも呼ばれます

Configuration Details

The settings in yurenizer are organized hierarchically, allowing you to control the scope and target of normalization.


1. taigen / yougen (Target Selection)

Use the taigen and yougen flags to control which parts of speech are included in the normalization.

Setting Default Value Description
taigen True Includes nouns and other substantives in the normalization. Set to False to exclude them.
yougen False Includes verbs and other predicates in the normalization. Set to True to include them (normalized to their lemma).

2. expansion (Expansion Flag)

The expansion flag determines how synonyms are expanded based on the synonym dictionary's internal control flags.

Value Description
from_another Expands only the synonyms with a control flag value of 0 in the synonym dictionary.
any Expands all synonyms regardless of their control flag value.

3. unify_level (Normalization Level)

Specify the level of normalization with the unify_level parameter.

Value Description
lexeme Performs the most comprehensive normalization, targeting all groups (a, b, c) mentioned below.
word_form Normalizes by word form, targeting groups b and c.
abbreviation Normalizes by abbreviation, targeting group c only.

4. Detailed Normalization Settings (a, b, c Groups)

a Group: Comprehensive Lexical Normalization

Controls normalization based on vocabulary and semantics using the following settings:

Setting Default Value Description
other_language True Normalizes non-Japanese terms (e.g., English) to Japanese. Set to False to disable this feature.
alias True Normalizes aliases. Set to False to disable this feature.
old_name True Normalizes old names. Set to False to disable this feature.
misuse True Normalizes misused terms. Set to False to disable this feature.

b Group: Abbreviation Normalization

Controls normalization of abbreviations using the following settings:

Setting Default Value Description
alphabetic_abbreviation True Normalizes abbreviations written in alphabetic characters. Set to False to disable this feature.
non_alphabetic_abbreviation True Normalizes abbreviations written in non-alphabetic characters (e.g., Japanese). Set to False to disable this feature.

c Group: Orthographic Normalization

Controls normalization of orthographic variations and errors using the following settings:

Setting Default Value Description
alphabet True Normalizes alphabetic variations. Set to False to disable this feature.
orthographic_variation True Normalizes orthographic variations. Set to False to disable this feature.
misspelling True Normalizes misspellings. Set to False to disable this feature.

5. custom_synonym (Custom Dictionary)

If you want to use a custom dictionary, control its behavior with the following setting:

Setting Default Value Description
custom_synonym True Enables the use of a custom dictionary. Set to False to disable it.

This hierarchical configuration allows for flexible normalization by defining the scope and target in detail.

Specifying SudachiDict

The length of text segmentation varies depending on the type of SudachiDict. Default is "full", but you can specify "small" or "core".
To use "small" or "core", install it and specify in the SynonymNormalizer() arguments:

pip install sudachidict_small
# or
pip install sudachidict_core
normalizer = SynonymNormalizer(sudachi_dict="small")
# or
normalizer = SynonymNormalizer(sudachi_dict="core")

※ Please refer to SudachiDict documentation for details.

Custom Dictionary Specification

You can specify your own custom dictionary.
If the same word exists in both the custom dictionary and Sudachi synonym dictionary, the custom dictionary takes precedence.

Custom Dictionary Format

The custom dictionary file should be in JSON, CSV, or TSV format.

  • JSON file
{
    "Representative word 1": ["Synonym 1_1", "Synonym 1_2", ...],
    "Representative word 2": ["Synonym 2_1", "Synonym 2_2", ...],
}
  • CSV file
Representative word 1,Synonym 1_1,Synonym 1_2,...
Representative word 2,Synonym 2_1,Synonym 2_2,...
  • TSV file
Representative word 1	Synonym 1_1	Synonym 1_2	...
Representative word 2	Synonym 2_1	Synonym 2_2	...
...

Example

If you create a file like the one below, "幽白", "ゆうはく", and "幽☆遊☆白書" will be normalized to "幽遊白書".

  • JSON file
{
    "幽遊白書": ["幽白", "ゆうはく", "幽☆遊☆白書"],
}
  • CSV file
幽遊白書,幽白,ゆうはく,幽☆遊☆白書
  • TSV file
幽遊白書	幽白	ゆうはく	幽☆遊☆白書

How to Specify

normalizer = SynonymNormalizer(custom_synonyms_file="path/to/custom_dict_file")

License

This project is licensed under the Apache License 2.0.

Open Source Software Used

This library uses SudachiPy and its dictionary SudachiDict for morphological analysis. These are also distributed under the Apache License 2.0.

For detailed license information, please check the LICENSE files of each project:

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

yurenizer-0.1.9.tar.gz (18.9 kB view details)

Uploaded Source

Built Distribution

yurenizer-0.1.9-py3-none-any.whl (20.5 kB view details)

Uploaded Python 3

File details

Details for the file yurenizer-0.1.9.tar.gz.

File metadata

  • Download URL: yurenizer-0.1.9.tar.gz
  • Upload date:
  • Size: 18.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.11.10 Linux/6.5.0-1025-azure

File hashes

Hashes for yurenizer-0.1.9.tar.gz
Algorithm Hash digest
SHA256 67a5e7217aa53d704ada410c60188c509b29e62e4fc48a2106b1bbcc0313ac33
MD5 ce72152d186bd556646000d836629c6c
BLAKE2b-256 ab00444a3b9f08897107826b33251f3adbe71a2abb8ea59138b2c128fb4e0dca

See more details on using hashes here.

File details

Details for the file yurenizer-0.1.9-py3-none-any.whl.

File metadata

  • Download URL: yurenizer-0.1.9-py3-none-any.whl
  • Upload date:
  • Size: 20.5 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.11.10 Linux/6.5.0-1025-azure

File hashes

Hashes for yurenizer-0.1.9-py3-none-any.whl
Algorithm Hash digest
SHA256 8a13f10f3d5132236ca3628c30693e7203eaeb2b3f099024b7b2af4f1368e6c7
MD5 0f72482328afca211318148c130649ef
BLAKE2b-256 9059081753806437efe825b824563b8accb0cb0c76f9bc1a9f3dab500cd02c82

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page