Datasets:
Sentence int64 1 4.18k | TokenOrder int64 1 253 | Token stringlengths 1 34 | NER_Tag stringclasses 17
values | pos stringclasses 15
values |
|---|---|---|---|---|
1 | 1 | Lola | B-PER | NER |
1 | 2 | va | O | C |
1 | 3 | Diyor | B-PER | NER |
1 | 4 | birgalikda | O | RR |
1 | 5 | , | O | PUNCT |
1 | 6 | Toshkent | B-LOC | NER |
1 | 7 | hamda | O | C |
1 | 8 | Zarafshonga | B-LOC | NER |
1 | 9 | borishdi | O | VB |
1 | 10 | . | O | PUNCT |
2 | 1 | “ | O | PUNCT |
2 | 2 | Asaka | B-ORG | NER |
2 | 3 | ” | O | PUNCT |
2 | 4 | bank | B-ORG | N |
2 | 5 | , | O | PUNCT |
2 | 6 | BMT | B-ORG | NER |
2 | 7 | , | O | PUNCT |
2 | 8 | SamISI | B-ORG | N |
2 | 9 | kabi | O | II |
2 | 10 | tashkilotlarga | O | N |
2 | 11 | Toshkent | B-LOC | NER |
2 | 12 | xalqaro | I-LOC | JJ |
2 | 13 | aeroporti | I-LOC | N |
2 | 14 | kabi | O | II |
2 | 15 | binolar | O | N |
2 | 16 | zarur | O | MD |
2 | 17 | ! | O | PUNCT |
3 | 1 | “ | O | PUNCT |
3 | 2 | O‘tkan | B-WORK | NER |
3 | 3 | kunlar | I-WORK | NER |
3 | 4 | ” | O | PUNCT |
3 | 5 | asari | O | N |
3 | 6 | , | O | PUNCT |
3 | 7 | “ | O | PUNCT |
3 | 8 | Oqqushlar | B-WORK | NER |
3 | 9 | ” | O | PUNCT |
3 | 10 | kompozitsiyasi | O | N |
3 | 11 | kabi | O | II |
3 | 12 | asarlar | O | N |
3 | 13 | 2025-05-03 00:00:00 | B-TEMPORAL | N |
3 | 14 | kuni | O | N |
3 | 15 | yozildi | O | VB |
3 | 16 | . | O | PUNCT |
4 | 1 | Soat | O | NER |
4 | 2 | 10:45:00 | B-TEMPORAL | NER |
4 | 3 | da | I-TEMPORAL | NER |
4 | 4 | 0.5 | B-NUMERIC | N |
4 | 5 | skidkada | O | N |
4 | 6 | 1000 | B-MONEY | NUM |
4 | 7 | so‘m | I-MONEY | N |
4 | 8 | va | O | C |
4 | 9 | 500 | B-MONEY | NUM |
4 | 10 | tejaldi | O | VB |
4 | 11 | . | O | PUNCT |
5 | 1 | Kollektiv | O | N |
5 | 2 | dastakni | O | N |
5 | 3 | ko‘targanda | O | VB |
5 | 4 | , | O | PUNCT |
5 | 5 | vertolyot | O | N |
5 | 6 | tezlik | O | N |
5 | 7 | bilan | O | II |
5 | 8 | yuqoriga | O | RR |
5 | 9 | ko‘tarildi | O | VB |
5 | 10 | . | O | PUNCT |
6 | 1 | Uchuvchi | O | N |
6 | 2 | kuzatuv | O | N |
6 | 3 | derazasi | O | N |
6 | 4 | orqali | O | II |
6 | 5 | pastdagi | O | JJ |
6 | 6 | daryoni | O | N |
6 | 7 | kuzatdi | O | VB |
6 | 8 | . | O | PUNCT |
7 | 1 | Harbiy | O | JJ |
7 | 2 | vertolyot | O | N |
7 | 3 | o‘rindiqlari | O | N |
7 | 4 | metall | O | N |
7 | 5 | ramkali | O | N |
7 | 6 | va | O | C |
7 | 7 | mustahkam | O | JJ |
7 | 8 | . | O | PUNCT |
8 | 1 | Texniklar | O | N |
8 | 2 | orqa | O | RR |
8 | 3 | nuridagi | O | N |
8 | 4 | payvandlarni | O | N |
8 | 5 | tekshirishdi | O | VB |
8 | 6 | . | O | PUNCT |
9 | 1 | Orqa | O | RR |
9 | 2 | rotor | O | N |
9 | 3 | nosoz | O | JJ |
9 | 4 | bo‘lsa | O | VB |
9 | 5 | , | O | PUNCT |
9 | 6 | vertolyot | O | N |
9 | 7 | yo‘nalishni | O | N |
9 | 8 | boshqara | O | VB |
9 | 9 | olmaydi | O | VB |
9 | 10 | . | O | PUNCT |
10 | 1 | Qoraqalpog‘istonda | B-LOC | IB |
10 | 2 | yo‘lovchi | O | IB |
10 | 3 | poyezd | O | IB |
10 | 4 | yuk | O | IB |
Uzbek NER Gold
Uzbek NER Gold is a token-level named entity recognition dataset for Uzbek. The dataset is distributed as a UTF-8 TSV file and uses BIO tagging for named entities.
Dataset Summary
- Dataset ID:
uznlp-uz/uzbek_NER - Language: Uzbek (
uz) - Rows: 59,569 token rows
- Columns: 5
- Sentences: 4,176
- Split:
train - Format: UTF-8 TSV
- Data file:
Uzbek_NER_Gold.tsv - License: CC BY 4.0
Data Fields
| Field | Description |
|---|---|
Sentence |
Sentence identifier. Tokens with the same value belong to the same sentence. |
TokenOrder |
1-based token position inside the sentence. |
Token |
Token text. |
NER_Tag |
BIO named entity tag. O marks tokens outside named entities. |
pos |
Source POS or token category label. |
Tagset
The dataset uses BIO labels over the following named entity types.
| Entity | Tag | Gold v1.0 guideline |
|---|---|---|
| Person | PER |
Inson ismi yoki aniq shaxs nomi; lavozim, kasb, umumiy guruh va olmoshlar PER emas. |
| Organization | ORG |
Tashkilot, vazirlik, universitet, agentlik, kompaniya, qo‘mita, fond/jamg‘arma va boshqalar. |
| Location | LOC |
Davlat, respublika, viloyat, shahar, tuman, geografik joy nomlari. |
| Miscellaneous | MISC |
Qolgan maxsus nomlangan obyektlar; aniq sinfga tushmaydigan nomlar. |
| Money | MONEY |
Pul birliklari va pul miqdorlari. |
| Number | NUMERIC |
Son, raqam, miqdor ifodalari, money/time bo‘lmagan raqamli birliklar. |
| Date/Time | TEMPORAL |
Sana, vaqt, davr, yil, oy, kun va vaqt oralig‘i. |
| Work | WORK |
Asar, kitob, film, loyiha, badiiy yoki ilmiy ish nomlari; standart yozilishi WORK. |
Label Values
NER labels: O, B-PER, I-PER, B-ORG, I-ORG, B-LOC, I-LOC, B-MISC, I-MISC, B-MONEY, I-MONEY, B-NUMERIC, I-NUMERIC, B-TEMPORAL, I-TEMPORAL, B-WORK, I-WORK
POS/category labels: C, IB, II, JJ, MD, N, NER, NUM, P, PUNCT, Prt, RR, UH, UNK, VB
Statistics
Overview
| Metric | Value |
|---|---|
| Token rows | 59,569 |
| Columns | 5 |
| Sentences | 4,176 |
| Unique tokens, case-sensitive | 14,791 |
| Unique tokens, case-folded | 13,969 |
| Duplicate rows | 0 |
| Empty values | 0 |
| Minimum sentence length | 1 |
| Maximum sentence length | 253 |
| Mean sentence length | 14.26 |
| Median sentence length | 12 |
Entity Span Distribution
| Entity type | Gold v1.0 spans | Original spans | Difference |
|---|---|---|---|
LOC |
2,302 | 2,262 | 40 |
ORG |
2,148 | 2,207 | -59 |
PER |
1,653 | 2,845 | -1,192 |
MISC |
1,400 | 1,498 | -98 |
TEMPORAL |
591 | 615 | -24 |
NUMERIC |
581 | 591 | -10 |
WORK |
441 | 465 | -24 |
MONEY |
134 | 140 | -6 |
| Total | 9,250 | 10,623 | -1,373 |
NER Tag Distribution
| NER tag | Count |
|---|---|
O |
43,445 |
B-LOC |
2,302 |
I-ORG |
2,191 |
B-ORG |
2,148 |
B-PER |
1,653 |
B-MISC |
1,400 |
I-MISC |
1,258 |
I-PER |
1,161 |
I-LOC |
842 |
B-TEMPORAL |
591 |
B-NUMERIC |
581 |
I-WORK |
448 |
B-WORK |
441 |
I-NUMERIC |
437 |
I-TEMPORAL |
323 |
I-MONEY |
214 |
B-MONEY |
134 |
POS/Category Distribution
| POS/category | Count |
|---|---|
N |
17,733 |
NER |
12,914 |
VB |
9,746 |
PUNCT |
4,628 |
JJ |
4,096 |
IB |
2,676 |
II |
2,137 |
C |
1,478 |
P |
1,328 |
RR |
1,207 |
NUM |
956 |
MD |
417 |
Prt |
225 |
UNK |
26 |
UH |
2 |
Normalization
- Text is stored as UTF-8.
- Uzbek text is normalized to Latin script.
- Uzbek apostrophes were normalized to distinct Unicode characters:
‘foro‘/g‘and’for the tutuq sign. - Non-standard apostrophe variants were removed from the released TSV.
- Each token is stored on a separate TSV row.
- No field contains empty values in the released file.
Loading
from datasets import load_dataset
dataset = load_dataset("uznlp-uz/uzbek_NER", split="train")
print(dataset[0])
The TSV file can also be loaded directly:
from datasets import load_dataset
dataset = load_dataset(
"csv",
data_files="Uzbek_NER_Gold.tsv",
delimiter="\t",
split="train",
)
Intended Use
This dataset can be used for Uzbek named entity recognition research and development, including token classification, NER model training, NER evaluation, information extraction, and benchmarking Uzbek language models.
Notes
The dataset is sentence-aware through the Sentence and TokenOrder fields. To reconstruct sentences, group rows by Sentence and sort them by TokenOrder.
The NER_Tag field follows BIO notation. A tag beginning with B- starts an entity span, and a tag beginning with I- continues an entity span of the same type.
Citation
If you use Uzbek NER Gold, cite the dataset repository:
@misc{uzbek_ner_gold,
title = {Uzbek NER Gold},
author = {{Elov B.B., Alaev R.H.}},
year = {2026},
howpublished = {\url{https://huggingface.co/datasets/uznlp-uz/uzbek_NER}},
license = {CC BY 4.0}
}
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