data
list
[{"unique_identifier":"as_2","native sentence":"অৱশ্যে লাচিত সংঘৰ স(...TRUNCATED)

Dataset Card for Aksharantar

Dataset Summary

Bhasha-Abhijnaanam is a language identification test set for native-script as well as Romanized text which spans 22 Indic languages.

Supported Tasks and Leaderboards

[More Information Needed]

Languages

Assamese (asm) Hindi (hin) Maithili (mai) Nepali (nep) Sanskrit (san) Tamil (tam)
Bengali (ben) Kannada (kan) Malayalam (mal) Oriya (ori) Santali (sat) Telugu (tel)
Bodo(brx) Kashmiri (kas) Manipuri (mni) Punjabi (pan) Sindhi (snd) Urdu (urd)
Gujarati (guj) Konkani (kok) Marathi (mar)

Dataset Structure

Data Instances

A random sample from Hindi (hin) Test dataset.
{
    "unique_identifier": "hin1", 
    "native sentence": "",
    "romanized sentence": "",
    "language": "Hindi", 
    "script": "Devanagari", 
    "source": "Dakshina",
}

Data Fields

  • unique_identifier (string): 3-letter language code followed by a unique number in Test set.

  • native sentence (string): A sentence in Indic language.

  • romanized sentence (string): Transliteration of native sentence in English (Romanized sentence).

  • language (string): Language of native sentence.

  • script (string): Script in which native sentence is written.

  • source (string): Source of the data.

    For created data sources, depending on the destination/sampling method of a pair in a language, it will be one of:

    • Dakshina Dataset
    • Flores-200
    • Manually Romanized
    • Manually generated

Data Splits

Subset asm ben brx guj hin kan kas (Perso-Arabic) kas (Devanagari) kok mai mal mni (Bengali) mni (Meetei Mayek) mar nep ori pan san sid tam tel urd
Native 1012 5606 1500 5797 5617 5859 2511 1012 1500 2512 5628 1012 1500 5611 2512 1012 5776 2510 2512 5893 5779 5751
Romanized 512 4595 433 4785 4606 4848 450 0 444 439 4617 0 442 4603 423 512 4765 448 0 4881 4767 4741

Dataset Creation

Information in the paper. Bhasha-Abhijnaanam: Native-script and romanized Language Identification for 22 Indic languages

Curation Rationale

[More Information Needed]

Source Data

Initial Data Collection and Normalization

Information in the paper. Bhasha-Abhijnaanam: Native-script and romanized Language Identification for 22 Indic languages

Who are the source language producers?

[More Information Needed]

Annotations

Information in the paper. Bhasha-Abhijnaanam: Native-script and romanized Language Identification for 22 Indic languages

Who are the annotators?

Information in the paper. Bhasha-Abhijnaanam: Native-script and romanized Language Identification for 22 Indic languages

Considerations for Using the Data

Social Impact of Dataset

[More Information Needed]

Discussion of Biases

[More Information Needed]

Other Known Limitations

[More Information Needed]

Additional Information

Dataset Curators

[More Information Needed]

Licensing Information

This data is released under the following licensing scheme:

  • Manually collected data: Released under CC0 license.

CC0 License Statement

CC0

  • We do not own any of the text from which this data has been extracted.
  • We license the actual packaging of manually collected data under the Creative Commons CC0 license (“no rights reserved”).
  • To the extent possible under law, AI4Bharat has waived all copyright and related or neighboring rights to Aksharantar manually collected data and existing sources.
  • This work is published from: India.

Citation Information

@misc{madhani2023bhashaabhijnaanam,
      title={Bhasha-Abhijnaanam: Native-script and romanized Language Identification for 22 Indic languages}, 
      author={Yash Madhani and Mitesh M. Khapra and Anoop Kunchukuttan},
      year={2023},
      eprint={2305.15814},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}

Contributions


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