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MuRIL: Multilingual Representations for Indian Languages
MuRIL is a BERT model pre-trained on 17 Indian languages and their transliterated counterparts. We have released the pre-trained model (with the MLM layer intact, enabling masked word predictions) in this repository. We have also released the encoder on TFHub with an additional pre-processing module, that processes raw text into the expected input format for the encoder. You can find more details on MuRIL in this paper.
Overview
This model uses a BERT base architecture [1] pretrained from scratch using the Wikipedia [2], Common Crawl [3], PMINDIA [4] and Dakshina [5] corpora for 17 [6] Indian languages.
We use a training paradigm similar to multilingual bert, with a few modifications as listed:
- We include translation and transliteration segment pairs in training as well.
- We keep an exponent value of 0.3 and not 0.7 for upsampling, shown to enhance low-resource performance. [7]
See the Training section for more details.
Training
The MuRIL model is pre-trained on monolingual segments as well as parallel segments as detailed below :
- Monolingual Data : We make use of publicly available corpora from Wikipedia and Common Crawl for 17 Indian languages.
- Parallel Data : We have two types of parallel data :
- Translated Data : We obtain translations of the above monolingual corpora using the Google NMT pipeline. We feed translated segment pairs as input. We also make use of the publicly available PMINDIA corpus.
- Transliterated Data : We obtain transliterations of Wikipedia using the IndicTrans [8] library. We feed transliterated segment pairs as input. We also make use of the publicly available Dakshina dataset.
We keep an exponent value of 0.3 to calculate duplication multiplier values for upsampling of lower resourced languages and set dupe factors accordingly. Note, we limit transliterated pairs to Wikipedia only.
The model was trained using a self-supervised masked language modeling task. We do whole word masking with a maximum of 80 predictions. The model was trained for 1000K steps, with a batch size of 4096, and a max sequence length of 512.
Trainable parameters
All parameters in the module are trainable, and fine-tuning all parameters is the recommended practice.
Uses & Limitations
This model is intended to be used for a variety of downstream NLP tasks for Indian languages. This model is trained on transliterated data as well, a phenomomenon commonly observed in the Indian context. This model is not expected to perform well on languages other than the ones used in pretraining, i.e. 17 Indian languages.
Evaluation
We provide the results of fine-tuning this model on a set of downstream tasks.
We choose these tasks from the XTREME benchmark, with evaluation done on Indian language test-sets.
We also transliterate the test-sets and evaluate on the same.
We use the same fine-tuning setting as is used by [9], except for TyDiQA, where we use additional SQuAD v1.1 English training data, similar to [10].
For Tatoeba, we do not fine-tune the model, and use the pooled_output of the last layer as the sentence embedding.
All results are computed in a zero-shot setting, with English being the high resource training set language.
Shown below are results on datasets from the XTREME benchmark (in %)
PANX (F1) ml ta te en bn hi mr ur Average mBERT 54.77 51.24 50.16 84.40 68.59 65.13 58.44 31.36 58.01 MuRIL 75.74 71.86 64.99 84.43 85.97 78.09 74.63 85.07 77.60
UDPOS (F1) en hi mr ta te ur Average mBERT 95.35 66.09 71.27 59.58 76.98 57.85 71.19 MuRIL 95.55 64.47 82.95 62.57 85.63 58.93 75.02
XNLI (Accuracy) en hi ur Average mBERT 81.72 60.52 58.20 66.81 MuRIL 83.85 70.66 67.70 74.07
Tatoeba (Accuracy) ml ta te bn hi mr ur Average mBERT 20.23 12.38 14.96 12.80 27.80 18.00 22.70 18.41 MuRIL 26.35 36.81 17.52 20.20 31.50 26.60 17.10 25.15
XQUAD (F1/EM) en hi Average mBERT 83.85/72.86 58.46/43.53 71.15/58.19 MuRIL 84.31/72.94 73.93/58.32 79.12/65.63
MLQA (F1/EM) en hi Average mBERT 80.39/67.30 50.28/35.18 65.34/51.24 MuRIL 80.28/67.37 67.34/50.22 73.81/58.80
TyDiQA (F1/EM) en bn te Average mBERT 75.21/65.00 60.62/45.13 53.55/44.54 63.13/51.66 MuRIL 74.10/64.55 78.03/66.37 73.95/46.94 75.36/59.28 Shown below are results on the transliterated versions of the above test-sets.
PANX (F1) ml_tr ta_tr te_tr bn_tr hi_tr mr_tr ur_tr Average mBERT 7.53 1.04 8.24 41.77 25.46 8.34 7.30 14.24 MuRIL 63.39 7.00 53.62 72.94 69.75 68.77 68.41 57.70
UDPOS (F1) hi_tr mr_tr ta_tr te_tr ur_tr Average mBERT 25.00 33.67 24.02 36.21 22.07 28.20 MuRIL 63.09 67.19 58.40 65.30 56.49 62.09
XNLI (Accuracy) hi_tr ur_tr Average mBERT 39.6 38.86 39.23 MuRIL 68.24 61.16 64.70
Tatoeba (Accuracy) ml_tr ta_tr te_tr bn_tr hi_tr mr_tr ur_tr Average mBERT 2.18 1.95 5.13 1.80 3.00 2.40 2.30 2.68 MuRIL 10.33 11.07 11.54 8.10 14.90 7.20 13.70 10.98
References
[1]: Jacob Devlin, Ming-Wei Chang, Kenton Lee, Kristina Toutanova. BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding. arXiv preprint arXiv:1810.04805, 2018.
[2]: Wikipedia
[3]: Common Crawl
[4]: PMINDIA
[5]: Dakshina
[6]: Assamese (as), Bengali (bn), English (en), Gujarati (gu), Hindi (hi), Kannada (kn), Kashmiri (ks), Malayalam (ml), Marathi (mr), Nepali (ne), Oriya (or), Punjabi (pa), Sanskrit (sa), Sindhi (sd), Tamil (ta), Telugu (te) and Urdu (ur).
[7]: Conneau, Alexis, et al. Unsupervised cross-lingual representation learning at scale. arXiv preprint arXiv:1911.02116 (2019).
[8]: IndicTrans
[9]: Hu, J., Ruder, S., Siddhant, A., Neubig, G., Firat, O., & Johnson, M. (2020). Xtreme: A massively multilingual multi-task benchmark for evaluating cross-lingual generalization. arXiv preprint arXiv:2003.11080.
[10]: Fang, Y., Wang, S., Gan, Z., Sun, S., & Liu, J. (2020). FILTER: An Enhanced Fusion Method for Cross-lingual Language Understanding. arXiv preprint arXiv:2009.05166.
Citation
If you find MuRIL useful in your applications, please cite the following paper:
@misc{khanuja2021muril,
title={MuRIL: Multilingual Representations for Indian Languages},
author={Simran Khanuja and Diksha Bansal and Sarvesh Mehtani and Savya Khosla and Atreyee Dey and Balaji Gopalan and Dilip Kumar Margam and Pooja Aggarwal and Rajiv Teja Nagipogu and Shachi Dave and Shruti Gupta and Subhash Chandra Bose Gali and Vish Subramanian and Partha Talukdar},
year={2021},
eprint={2103.10730},
archivePrefix={arXiv},
primaryClass={cs.CL}
}
Contact
Please mail your queries/feedback to [email protected].