prachuryyaIITG/FiNERVINER_Bodo_IndicBERTv2
Token Classification
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क्रिकेट O
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– O
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बेर'निका B-VisualWork
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से I-VisualWork
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दिथागिरि O
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एलिजाबेथा B-Artist
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भस्टान I-Artist
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1973. O
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सिस्मिक B-MedicalProcedure
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ट'म'ग्राफी I-MedicalProcedure
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आ O
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अरगें O
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फोथारनि O
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सिङाव O
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मोनसे O
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सिगांनि O
|
मैग्मा O
|
हाबफैनायनि O
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नेरसोनफोरखौ O
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सिनायथि O
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होदों O
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सार O
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आइजेक B-Politician
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निउटनआ I-Politician
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गिबिसिन O
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खामानिखौ O
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दिहुनदोंमोन O
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टेलीस्कोप B-OtherPROD
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। O
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ट्रेनाव O
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बारग' O
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हादोरगिरि O
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जन B-Politician
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क्विन्सी I-Politician
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एडाम्स I-Politician
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बो O
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दंमोन O
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सनी B-Artist
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बर्गेस I-Artist
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रकाबिली O
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महरगिरि O
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आरो O
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रकाबिली B-OtherLOC
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हल I-OtherLOC
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अफ I-OtherLOC
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फेमनि I-OtherLOC
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सासे I-OtherLOC
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सोद्रोमा I-OtherLOC
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बियो O
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निब्ल'नि B-Facility
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बागाननि I-Facility
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बिगोमामोन I-Facility
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। O
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बेबादिनो O
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गुबुंले O
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जानायनि O
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दाबिफोरा O
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उनाव O
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एल O
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अरियेल O
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आरो O
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लुक'जेड B-Drink
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नि O
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बेरेखायै O
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खालामनाय O
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जादोंमोन O
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ट्रेनफोरा O
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भिभिया O
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हेलनबर्गेन B-Station
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आरो O
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रिंकेबी B-Station
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खारगासिनो O
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दंमोन O
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बिथांजोआ O
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500 O
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मीटर O
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आरो O
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1000 O
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मीटर O
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बादायलायनायाव O
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2010 O
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माइथायनि O
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गोजां O
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बोथोरनि O
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अलिम्पिक O
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>27 O
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चाइना O
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आर्टनि O
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थाखाय O
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बादायलायदोंमोन O
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बिथांजोआ O
|
FiNERVINER is a high-quality fine-grained named entity recognition dataset created through annotation projection method.
The vulnerable languages are: Bodo (brx), Mizo (lus), and Manipuri (mni).
| Language | Train set | Development set | Test set | |||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Sentences | Entities | Tokens | Sentences | Entities | Tokens | Sentences | Entities | Tokens | IAA (κ) | |
| Bodo (brx) | 212,835 | 302,713 | 2,958,455 | 23,649 | 33,808 | 329,145 | 1,000 | 1,423 | 14,082 | 0.875 |
| Mizo (lus) | 177,224 | 252,767 | 2,515,386 | 19,692 | 28,143 | 279,681 | 1,000 | 1,384 | 14,330 | 0.811 |
| Manipuri (mni) | 239,813 | 302,713 | 4,422,373 | 26,646 | 38,330 | 484,212 | 1,000 | 1,426 | 18,765 | 0.821 |
Note: IAA (Inter-Annotator Agreement) scores are represented using Cohen's κ.
Prachuryya Kaushik
Prof. Ashish Anand
FiNERVINER is a part of the AWED-FiNER ecosystem: Paper | GitHub | Interactive Demo
You can use the AWED-FiNER agentic tool to interact with expert models trained using this framework. Below is an example using the smolagents library:
from smolagents import CodeAgent, HfApiModel
from tool import AWEDFiNERTool
# Initialize the expert tool
ner_tool = AWEDFiNERTool()
# Initialize the agent (using a model of your choice)
agent = CodeAgent(tools=[ner_tool], model=HfApiModel())
# The agent will automatically use AWED-FiNER for specialized NER
# Case: Processing a vulnerable language (Bodo)
agent.run("Recognize the named entities in this Bodo sentence: 'बिथाङा दिल्लियाव थाङो।'")
If you use this dataset, please cite the following papers:
@inproceedings{kaushik2026finerviner,
title={FiNERVINER: Fine-grained Named Entity Recognition for Vulnerable languages of India's North Eastern Region},
author={Kaushik, Prachuryya and Anand, Ashish},
booktitle={Proceedings of the Fifteenth Language Resources and Evaluation Conference},
volume={15},
year={2026}
}
@misc{kaushik2026awedfiner,
title = {AWED-FiNER: Agents, Web Applications, and Expert Detectors for Fine-grained Named Entity Recognition across 36 Languages for 6.6 Billion Speakers},
author = {Kaushik, Prachuryya and Anand, Ashish},
year = {2026},
note = {arXiv preprint, submitted},
archivePrefix= {arXiv},
eprint = {submit/7163987}
}