Datasets:
license: gpl-3.0
task_categories:
- token-classification
task_ids:
- named-entity-recognition
language:
- tl
size_categories:
- 1K<n<10K
pretty_name: TLUnified-NER
tags:
- low-resource
- named-entity-recognition
annotations_creators:
- expert-generated
multilinguality:
- monolingual
train-eval-index:
- config: conllpp
task: token-classification
task_id: entity_extraction
splits:
train_split: train
eval_split: test
col_mapping:
tokens: tokens
ner_tags: tags
metrics:
- type: seqeval
name: seqeval
πͺ spaCy Project: TLUnified-NER Corpus
- Homepage: Github
- Repository: Github
- Point of Contact: ljvmiranda@gmail.com
Dataset Summary
This dataset contains the annotated TLUnified corpora from Cruz and Cheng (2021). It is a curated sample of around 7,000 documents for the named entity recognition (NER) task. The majority of the corpus are news reports in Tagalog, resembling the domain of the original ConLL 2003. There are three entity types: Person (PER), Organization (ORG), and Location (LOC).
Dataset | Examples | PER | ORG | LOC |
---|---|---|---|---|
Train | 6252 | 6418 | 3121 | 3296 |
Development | 782 | 793 | 392 | 409 |
Test | 782 | 818 | 423 | 438 |
Data Fields
The data fields are the same among all splits:
id
: astring
featuretokens
: alist
ofstring
features.ner_tags
: alist
of classification labels, with possible values includingO
(0),B-PER
(1),I-PER
(2),B-ORG
(3),I-ORG
(4),B-LOC
(5),I-LOC
(6)
Annotation process
The author, together with two more annotators, labeled curated portions of TLUnified in the course of four months. All annotators are native speakers of Tagalog. For each annotation round, the annotators resolved disagreements, updated the annotation guidelines, and corrected past annotations. They followed the process prescribed by Reiters (2017).
They also measured the inter-annotator agreement (IAA) by computing pairwise comparisons and averaging the results:
- Cohen's Kappa (all tokens): 0.81
- Cohen's Kappa (annotated tokens only): 0.65
- F1-score: 0.91
About this repository
This repository is a spaCy project for
converting the annotated spaCy files into IOB. The process goes like this: we
download the raw corpus from Google Cloud Storage (GCS), convert the spaCy
files into a readable IOB format, and parse that using our loading script
(i.e., tlunified-ner.py
). We're also shipping the IOB file so that it's
easier to access.
π project.yml
The project.yml
defines the data assets required by the
project, as well as the available commands and workflows. For details, see the
spaCy projects documentation.
β― Commands
The following commands are defined by the project. They
can be executed using spacy project run [name]
.
Commands are only re-run if their inputs have changed.
Command | Description |
---|---|
setup-data |
Prepare the Tagalog corpora used for training various spaCy components |
upload-to-hf |
Upload dataset to HuggingFace Hub |
β Workflows
The following workflows are defined by the project. They
can be executed using spacy project run [name]
and will run the specified commands in order. Commands are only re-run if their
inputs have changed.
Workflow | Steps |
---|---|
all |
setup-data β upload-to-hf |
π Assets
The following assets are defined by the project. They can
be fetched by running spacy project assets
in the project directory.
File | Source | Description |
---|---|---|
assets/corpus.tar.gz |
URL | Annotated TLUnified corpora in spaCy format with train, dev, and test splits. |
Citation
You can cite this dataset as:
@misc{miranda2023developing,
title={Developing a Named Entity Recognition Dataset for Tagalog},
author={Lester James V. Miranda},
year={2023},
eprint={2311.07161},
archivePrefix={arXiv},
primaryClass={cs.CL}
}