Datasets:
Tasks:
Token Classification
Modalities:
Text
Formats:
json
Languages:
Uzbek
Size:
10K - 100K
License:
metadata
license: mit
task_categories:
- token-classification
language:
- uz
tags:
- chemistry
- biology
- legal
- art
- code
- medical
- music
- finance
pretty_name: Uzbek NER
size_categories:
- 10K<n<100K
Uzbek NER Dataset
About the Dataset
This dataset is created for Named Entity Recognition (NER) in Uzbek texts. The dataset includes named entities from various categories such as persons, places, organizations, dates, and more.
Data Structure
The data is provided in JSON format with the following structure:
{
"LOC": ["Location names"],
"ORG": ["Organization names"],
"PERSON": ["Person names"],
"DATE": ["Date expressions"],
"MONEY": ["Monetary amounts"],
"PERCENT": ["Percentage values"],
"QUANTITY": ["Quantities"],
"TIME": ["Time expressions"],
"PRODUCT": ["Product names"],
"EVENT": ["Event names"],
"WORK_OF_ART": ["Work of art titles"],
"LANGUAGE": ["Language names"],
"CARDINAL": ["Cardinal numbers"],
"ORDINAL": ["Ordinal numbers"],
"NORP": ["Nationalities or religious/political groups"],
"FACILITY": ["Facility names"],
"LAW": ["Laws or regulations"],
"GPE": ["Countries, cities, states"]
}
Preparation Guidelines
The following guidelines were followed in preparing this dataset:
- All possible NERs were extracted from the text (approximately 80%-90%).
- NERs are provided in their original form without additional annotations or translations.
Examples
Here are some examples of NER categories:
- LOC (Location names): ["Tashkent", "Uzbekistan"]
- ORG (Organization names): ["XDP", "Uzbekistan Ministry of Culture"]
- PERSON (Person names): ["Ozodbek Nazarbekov", "Ibrat Safo"]
- DATE (Date expressions): ["2022", "2024"]
- MONEY (Monetary amounts): ["2 billion som", "25 trillion som"]
- PERCENT (Percentage values): ["3%", "5%"]
- QUANTITY (Quantities): ["100 tons", "200 liters"]
- TIME (Time expressions): ["5 minutes", "2 hours"]
- PRODUCT (Product names): ["Toyota", "iPhone 13"]
- EVENT (Event names): ["Uzbekistan Championship", "Uzbekistan Cup"]
- WORK_OF_ART (Work of art titles): ["Song", "Book"]
- LANGUAGE (Language names): ["Uzbek", "English"]
- CARDINAL (Cardinal numbers): ["one", "two"]
- ORDINAL (Ordinal numbers): ["first", "second"]
- NORP (Nationalities or religious/political groups): ["Uzbeks", "Russians"]
- FACILITY (Facility names): ["Children's Health Clinic", "Tashkent Aviation Institute"]
- LAW (Laws or regulations): ["Constitution", "Law"]
- GPE (Countries, cities, states): ["Uzbekistan", "Kokand"]
Download
You can download this dataset using the following code:
from datasets import load_dataset
dataset = load_dataset("risqaliyevds/uzbek_ner")
License
This dataset is provided as open source and is available for free use by all users.
Contact
If you have any questions or need more information, please contact us. LinkedIn: Riskaliev Murad