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title: IndicGLUE | |
emoji: 🤗 | |
colorFrom: blue | |
colorTo: red | |
sdk: gradio | |
sdk_version: 3.19.1 | |
app_file: app.py | |
pinned: false | |
tags: | |
- evaluate | |
- metric | |
description: >- | |
IndicGLUE is a natural language understanding benchmark for Indian languages. It contains a wide | |
variety of tasks and covers 11 major Indian languages - as, bn, gu, hi, kn, ml, mr, or, pa, ta, te. | |
# Metric Card for IndicGLUE | |
## Metric description | |
This metric is used to compute the evaluation metric for the [IndicGLUE dataset](https://huggingface.co/datasets/indic_glue). | |
IndicGLUE is a natural language understanding benchmark for Indian languages. It contains a wide variety of tasks and covers 11 major Indian languages - Assamese (`as`), Bengali (`bn`), Gujarati (`gu`), Hindi (`hi`), Kannada (`kn`), Malayalam (`ml`), Marathi(`mr`), Oriya(`or`), Panjabi (`pa`), Tamil(`ta`) and Telugu (`te`). | |
## How to use | |
There are two steps: (1) loading the IndicGLUE metric relevant to the subset of the dataset being used for evaluation; and (2) calculating the metric. | |
1. **Loading the relevant IndicGLUE metric** : the subsets of IndicGLUE are the following: `wnli`, `copa`, `sna`, `csqa`, `wstp`, `inltkh`, `bbca`, `cvit-mkb-clsr`, `iitp-mr`, `iitp-pr`, `actsa-sc`, `md`, and`wiki-ner`. | |
More information about the different subsets of the Indic GLUE dataset can be found on the [IndicGLUE dataset page](https://indicnlp.ai4bharat.org/indic-glue/). | |
2. **Calculating the metric**: the metric takes two inputs : one list with the predictions of the model to score and one lists of references for each translation for all subsets of the dataset except for `cvit-mkb-clsr`, where each prediction and reference is a vector of floats. | |
```python | |
indic_glue_metric = evaluate.load('indic_glue', 'wnli') | |
references = [0, 1] | |
predictions = [0, 1] | |
results = indic_glue_metric.compute(predictions=predictions, references=references) | |
``` | |
## Output values | |
The output of the metric depends on the IndicGLUE subset chosen, consisting of a dictionary that contains one or several of the following metrics: | |
`accuracy`: the proportion of correct predictions among the total number of cases processed, with a range between 0 and 1 (see [accuracy](https://huggingface.co/metrics/accuracy) for more information). | |
`f1`: the harmonic mean of the precision and recall (see [F1 score](https://huggingface.co/metrics/f1) for more information). Its range is 0-1 -- its lowest possible value is 0, if either the precision or the recall is 0, and its highest possible value is 1.0, which means perfect precision and recall. | |
`precision@10`: the fraction of the true examples among the top 10 predicted examples, with a range between 0 and 1 (see [precision](https://huggingface.co/metrics/precision) for more information). | |
The `cvit-mkb-clsr` subset returns `precision@10`, the `wiki-ner` subset returns `accuracy` and `f1`, and all other subsets of Indic GLUE return only accuracy. | |
### Values from popular papers | |
The [original IndicGlue paper](https://aclanthology.org/2020.findings-emnlp.445.pdf) reported an average accuracy of 0.766 on the dataset, which varies depending on the subset selected. | |
## Examples | |
Maximal values for the WNLI subset (which outputs `accuracy`): | |
```python | |
indic_glue_metric = evaluate.load('indic_glue', 'wnli') | |
references = [0, 1] | |
predictions = [0, 1] | |
results = indic_glue_metric.compute(predictions=predictions, references=references) | |
print(results) | |
{'accuracy': 1.0} | |
``` | |
Minimal values for the Wiki-NER subset (which outputs `accuracy` and `f1`): | |
```python | |
>>> indic_glue_metric = evaluate.load('indic_glue', 'wiki-ner') | |
>>> references = [0, 1] | |
>>> predictions = [1,0] | |
>>> results = indic_glue_metric.compute(predictions=predictions, references=references) | |
>>> print(results) | |
{'accuracy': 1.0, 'f1': 1.0} | |
``` | |
Partial match for the CVIT-Mann Ki Baat subset (which outputs `precision@10`) | |
```python | |
>>> indic_glue_metric = evaluate.load('indic_glue', 'cvit-mkb-clsr') | |
>>> references = [[0.5, 0.5, 0.5], [0.1, 0.2, 0.3]] | |
>>> predictions = [[0.5, 0.5, 0.5], [0.1, 0.2, 0.3]] | |
>>> results = indic_glue_metric.compute(predictions=predictions, references=references) | |
>>> print(results) | |
{'precision@10': 1.0} | |
``` | |
## Limitations and bias | |
This metric works only with datasets that have the same format as the [IndicGLUE dataset](https://huggingface.co/datasets/glue). | |
## Citation | |
```bibtex | |
@inproceedings{kakwani2020indicnlpsuite, | |
title={{IndicNLPSuite: Monolingual Corpora, Evaluation Benchmarks and Pre-trained Multilingual Language Models for Indian Languages}}, | |
author={Divyanshu Kakwani and Anoop Kunchukuttan and Satish Golla and Gokul N.C. and Avik Bhattacharyya and Mitesh M. Khapra and Pratyush Kumar}, | |
year={2020}, | |
booktitle={Findings of EMNLP}, | |
} | |
``` | |
## Further References | |
- [IndicNLP website](https://indicnlp.ai4bharat.org/home/) | |