t2p-mbart-large-cc25-commonvoice
t2p-mbart-large-cc25-commonvoice is a text-to-pictograms translation model built by fine-tuning the mbart-large-cc25 model on a dataset of pairs of transcriptions / pictogram token sequence (each token is linked to a pictogram image from ARASAAC). The model is used only for inference.
Training details
The model was trained with Fairseq.
Datasets
The Propicto-commonvoice dataset is used, which was created from the CommmonVoice v.15.0 corpus. This dataset was built with the method presented in the research paper titled "A Multimodal French Corpus of Aligned Speech, Text, and Pictogram Sequences for Speech-to-Pictogram Machine Translation" at LREC-Coling 2024. The dataset was split into training, validation, and test sets.
Split | Number of utterances |
---|---|
train | 527,390 |
valid | 16,124 |
test | 16,120 |
Parameters
This is the arguments in the training pipeline :
fairseq-train $DATA \
--encoder-normalize-before --decoder-normalize-before \
--arch mbart_large --layernorm-embedding \
--task translation_from_pretrained_bart \
--source-lang fr --target-lang frp \
--criterion label_smoothed_cross_entropy --label-smoothing 0.2 \
--optimizer adam --adam-eps 1e-06 --adam-betas '(0.9, 0.98)' \
--lr-scheduler polynomial_decay --lr 3e-05 --warmup-updates 2500 --total-num-update 40000 \
--dropout 0.3 --attention-dropout 0.1 --weight-decay 0.0 \
--max-tokens 1024 --update-freq 2 \
--save-interval 1 --save-interval-updates 5000 --keep-interval-updates 5 \
--seed 222 --log-format simple --log-interval 2 \
--langs $langs \
--ddp-backend legacy_ddp \
--max-epoch 40 \
--save-dir models/checkpoints/mt_mbart_fr_frp_commonvoice_langs \
--keep-best-checkpoints 5 \
--keep-last-epochs 5
Evaluation
The model was evaluated with sacreBLEU, where we compared the reference pictogram translation with the model hypothesis.
fairseq-generate commonvoice_data/data/ \
--path $model_dir/checkpoint_best.pt \
--task translation_from_pretrained_bart \
--gen-subset test \
-t frp -s fr \
--bpe 'sentencepiece' --sentencepiece-model mbart.cc25.v2/sentence.bpe.model \
--sacrebleu \
--batch-size 32 --langs $langs > out.txt
The output file prints the following information :
S-1071 cette collaboration dure trois ans<unk>
T-1071 le collaboration durer 3 année
H-1071 -0.2111533135175705 ▁le ▁collaboration ▁dur er ▁3 ▁année
D-1071 -0.2111533135175705 le collaboration durer 3 année
P-1071 -0.2783 -0.0584 -0.2309 -0.2009 -0.2145 -0.1210 -0.3330 -0.2523
Generate test with beam=5: BLEU4 = 72.31, 84.3/77.4/72.3/67.7 (BP=0.962, ratio=0.963, syslen=227722, reflen=236545)
Results
Comparison to other translation models :
Model | validation | test |
---|---|---|
t2p-t5-large-commonvoice | 86.3 | 86.5 |
t2p-nmt-commonvoice | 86.0 | 82.6 |
t2p-mbart-large-cc25-commonvoice | 72.3 | 72.3 |
t2p-nllb-200-distilled-600M-commonvoice | 87.4 | 87.6 |
Environmental Impact
Training was performed using a single Nvidia V100 GPU with 32 GB of memory which took around 18 hours in total.
Using t2p-mbart-large-cc25-commonvoice
The scripts to use the t2p-mbart-large-cc25-commonvoice model are located in the speech-to-pictograms GitHub repository.
Information
- Language(s): French
- License: Apache-2.0
- Developed by: Cécile Macaire
- Funded by
- GENCI-IDRIS (Grant 2023-AD011013625R1)
- PROPICTO ANR-20-CE93-0005
- Authors
- Cécile Macaire
- Chloé Dion
- Emmanuelle Esperança-Rodier
- Benjamin Lecouteux
- Didier Schwab
Citation
If you use this model for your own research work, please cite as follows:
@inproceedings{macaire_jeptaln2024,
title = {{Approches cascade et de bout-en-bout pour la traduction automatique de la parole en pictogrammes}},
author = {Macaire, C{\'e}cile and Dion, Chlo{\'e} and Schwab, Didier and Lecouteux, Benjamin and Esperan{\c c}a-Rodier, Emmanuelle},
url = {https://inria.hal.science/hal-04623007},
booktitle = {{35{\`e}mes Journ{\'e}es d'{\'E}tudes sur la Parole (JEP 2024) 31{\`e}me Conf{\'e}rence sur le Traitement Automatique des Langues Naturelles (TALN 2024) 26{\`e}me Rencontre des {\'E}tudiants Chercheurs en Informatique pour le Traitement Automatique des Langues (RECITAL 2024)}},
address = {Toulouse, France},
publisher = {{ATALA \& AFPC}},
volume = {1 : articles longs et prises de position},
pages = {22-35},
year = {2024}
}