attacut

Fast and Reasonably Accurate Word Tokenizer for Thai

17 个版本
Pattarawat Chormai et al. <foomail@foo.com>
安装
pip install attacut
poetry add attacut
pipenv install attacut
conda install attacut
描述

AttaCut: Fast and Reasonably Accurate Word Tokenizer for Thai

Build Status Build status

How does AttaCut look like?


TL;DR: 3-Layer Dilated CNN on syllable and character features. It’s 6x faster than DeepCut (SOTA) while its WL-f1 on BEST is 91%, only 2% lower.

Installation

$ pip install attacut

Remarks: Windows users need to install PyTorch before the command above. Please consult PyTorch.org for more details.

Usage

Command-Line Interface

$ attacut-cli -h
AttaCut: Fast and Reasonably Accurate Word Tokenizer for Thai

Usage:
  attacut-cli <src> [--dest=<dest>] [--model=<model>]
  attacut-cli [-v | --version]
  attacut-cli [-h | --help]

Arguments:
  <src>             Path to input text file to be tokenized

Options:
  -h --help         Show this screen.
  --model=<model>   Model to be used [default: attacut-sc].
  --dest=<dest>     If not specified, it'll be <src>-tokenized-by-<model>.txt
  -v --version      Show version

High-Level API

from attacut import tokenize, Tokenizer

# tokenize `txt` using our best model `attacut-sc`
words = tokenize(txt)

# alternatively, an AttaCut tokenizer might be instantiated directly, allowing
# one to specify whether to use `attacut-sc` or `attacut-c`.
atta = Tokenizer(model="attacut-sc")
words = atta.tokenize(txt)

Benchmark Results

Belows are brief summaries. More details can be found on our benchmarking page.

Tokenization Quality

Speed

Retraining on Custom Dataset

Please refer to our retraining page

Acknowledgements

This repository was initially done by Pattarawat Chormai, while interning at Dr. Attapol Thamrongrattanarit's NLP Lab, Chulalongkorn University, Bangkok, Thailand. Many people have involed in this project. Complete list of names can be found on Acknowledgement.

版本列表
1.1.0.dev0 2020-03-13
1.0.6 2019-11-21
1.0.6.dev0 2019-11-21
1.0.5 2019-10-18
1.0.4 2019-10-01
1.0.4.dev0 2019-10-01
1.0.3 2019-10-01
1.0.3.dev0 2019-10-01
1.0.2 2019-09-08
1.0.2.dev0 2019-09-08
1.0.1 2019-09-01
1.0.0 2019-09-01
0.0.6.dev0 2019-08-30
0.0.5.dev0 2019-08-30
0.0.4.dev0 2019-08-29
0.0.3.dev0 2019-08-25
0.0.2.dev0 2019-08-25