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Releasing Hindi ELECTRA model

This is a first attempt at a Hindi language model trained with Google Research's ELECTRA. I don't modify ELECTRA until we get into finetuning

Tokenization and training CoLab: https://colab.research.google.com/drive/1R8TciRSM7BONJRBc9CBZbzOmz39FTLl_

Blog post: https://medium.com/@mapmeld/teaching-hindi-to-electra-b11084baab81

I was greatly influenced by: https://huggingface.co/blog/how-to-train

Corpus

Download: https://drive.google.com/drive/u/1/folders/1WikYHHMI72hjZoCQkLPr45LDV8zm9P7p

The corpus is two files:

Bonus notes:

  • Adding English wiki text or parallel corpus could help with cross-lingual tasks and training

Vocabulary

https://drive.google.com/file/d/1-02Um-8ogD4vjn4t-wD2EwCE-GtBjnzh/view?usp=sharing

Bonus notes:

  • Created with HuggingFace Tokenizers; could be longer or shorter, review ELECTRA vocab_size param

Pretrain TF Records

build_pretraining_dataset.py splits the corpus into training documents

Set the ELECTRA model size and whether to split the corpus by newlines. This process can take hours on its own.

https://drive.google.com/drive/u/1/folders/1--wBjSH59HSFOVkYi4X-z5bigLnD32R5

Bonus notes:

  • I am not sure of the meaning of the corpus newline split (what is the alternative?) and given this corpus, which creates the better training docs

Training

Structure your files, with data-dir named "trainer" here

trainer
- vocab.txt
- pretrain_tfrecords
-- (all .tfrecord... files)
- models
-- modelname
--- checkpoint
--- graph.pbtxt
--- model.*

CoLab notebook gives examples of GPU vs. TPU setup

configure_pretraining.py

Model https://drive.google.com/drive/folders/1cwQlWryLE4nlke4OixXA7NK8hzlmUR0c?usp=sharing

Using this model with Transformers

Sample movie reviews classifier: https://colab.research.google.com/drive/1mSeeSfVSOT7e-dVhPlmSsQRvpn6xC05w

Slightly outperforms Multilingual BERT on these Hindi Movie Reviews from https://github.com/sid573/Hindi_Sentiment_Analysis