模型:

etalab-ia/dpr-question_encoder-fr_qa-camembert

中文

dpr-question_encoder-fr_qa-camembert

Description

French DPR model using CamemBERT as base and then fine-tuned on a combo of three French Q&A

Data

French Q&A

We use a combination of three French Q&A datasets:

  • PIAFv1.1
  • FQuADv1.0
  • SQuAD-FR (SQuAD automatically translated to French)
  • Training

    We are using 90 562 random questions for train and 22 391 for dev . No question in train exists in dev . For each question, we have a single positive_context (the paragraph where the answer to this question is found) and around 30 hard_negtive_contexts . Hard negative contexts are found by querying an ES instance (via bm25 retrieval) and getting the top-k candidates that do not contain the answer .

    The files are over here .

    Evaluation

    We use FQuADv1.0 and French-SQuAD evaluation sets.

    Training Script

    We use the official Facebook DPR implentation with a slight modification: by default, the code can work with Roberta models, still we changed a single line to make it easier to work with Camembert. This modification can be found over here .

    Hyperparameters

    python -m torch.distributed.launch --nproc_per_node=8 train_dense_encoder.py \
    --max_grad_norm 2.0 --encoder_model_type hf_bert --pretrained_file data/bert-base-multilingual-uncased \
    --seed 12345 --sequence_length 256 --warmup_steps 1237 --batch_size 16 --do_lower_case \
    --train_file DPR_FR_train.json \
    --dev_file  ./data/100_hard_neg_ctxs/DPR_FR_dev.json \
    --output_dir ./output/bert --learning_rate 2e-05 --num_train_epochs 35 \
    --dev_batch_size 16 --val_av_rank_start_epoch 25 \
    --pretrained_model_cfg ./data/bert-base-multilingual-uncased
    

    Evaluation results

    We obtain the following evaluation by using FQuAD and SQuAD-FR evaluation (or validation) sets. To obtain these results, we use haystack's evaluation script ( we report Retrieval results only ).

    DPR

    FQuAD v1.0 Evaluation
    For 2764 out of 3184 questions (86.81%), the answer was in the top-20 candidate passages selected by the retriever.
    Retriever Recall: 0.87
    Retriever Mean Avg Precision: 0.57
    
    SQuAD-FR Evaluation
    For 8945 out of 10018 questions (89.29%), the answer was in the top-20 candidate passages selected by the retriever.
    Retriever Recall: 0.89
    Retriever Mean Avg Precision: 0.63
    

    BM25

    For reference, BM25 gets the results shown below. As in the original paper, regarding SQuAD-like datasets, the results of DPR are consistently superseeded by BM25.

    FQuAD v1.0 Evaluation
    For 2966 out of 3184 questions (93.15%), the answer was in the top-20 candidate passages selected by the retriever.
    Retriever Recall: 0.93
    Retriever Mean Avg Precision: 0.74
    
    SQuAD-FR Evaluation
    For 9353 out of 10018 questions (93.36%), the answer was in the top-20 candidate passages selected by the retriever.
    Retriever Recall: 0.93
    Retriever Mean Avg Precision: 0.77
    

    Usage

    The results reported here are obtained with the haystack library. To get to similar embeddings using exclusively HF transformers library, you can do the following:

    from transformers import AutoTokenizer, AutoModel
    query = "Salut, mon chien est-il mignon ?"
    tokenizer = AutoTokenizer.from_pretrained("etalab-ia/dpr-question_encoder-fr_qa-camembert",  do_lower_case=True)
    input_ids = tokenizer(query, return_tensors='pt')["input_ids"]
    model = AutoModel.from_pretrained("etalab-ia/dpr-question_encoder-fr_qa-camembert", return_dict=True)
    embeddings = model.forward(input_ids).pooler_output
    print(embeddings)
    

    And with haystack , we use it as a retriever:

    retriever = DensePassageRetriever(
        document_store=document_store,
        query_embedding_model="etalab-ia/dpr-question_encoder-fr_qa-camembert",
        passage_embedding_model="etalab-ia/dpr-ctx_encoder-fr_qa-camembert",
        model_version=dpr_model_tag,
        infer_tokenizer_classes=True,
    )
    

    Acknowledgments

    This work was performed using HPC resources from GENCI–IDRIS (Grant 2020-AD011011224).

    Citations

    Datasets

    PIAF
    @inproceedings{KeraronLBAMSSS20,
      author    = {Rachel Keraron and
                   Guillaume Lancrenon and
                   Mathilde Bras and
                   Fr{\'{e}}d{\'{e}}ric Allary and
                   Gilles Moyse and
                   Thomas Scialom and
                   Edmundo{-}Pavel Soriano{-}Morales and
                   Jacopo Staiano},
      title     = {Project {PIAF:} Building a Native French Question-Answering Dataset},
      booktitle = {{LREC}},
      pages     = {5481--5490},
      publisher = {European Language Resources Association},
      year      = {2020}
    }
    
    FQuAD
    @article{dHoffschmidt2020FQuADFQ,
      title={FQuAD: French Question Answering Dataset},
      author={Martin d'Hoffschmidt and Maxime Vidal and Wacim Belblidia and Tom Brendl'e and Quentin Heinrich},
      journal={ArXiv},
      year={2020},
      volume={abs/2002.06071}
    }
    
    SQuAD-FR
     @MISC{kabbadj2018,
       author =       "Kabbadj, Ali",
       title =        "Something new in French Text Mining and Information Extraction (Universal Chatbot): Largest Q&A French training dataset (110 000+) ",
       editor =       "linkedin.com",
       month =        "November",
       year =         "2018",
       url =          "\url{https://www.linkedin.com/pulse/something-new-french-text-mining-information-chatbot-largest-kabbadj/}",
       note =         "[Online; posted 11-November-2018]",
     }
    

    Models

    CamemBERT

    HF model card : https://huggingface.co/camembert-base

    @inproceedings{martin2020camembert,
      title={CamemBERT: a Tasty French Language Model},
      author={Martin, Louis and Muller, Benjamin and Su{\'a}rez, Pedro Javier Ortiz and Dupont, Yoann and Romary, Laurent and de la Clergerie, {\'E}ric Villemonte and Seddah, Djam{\'e} and Sagot, Beno{\^\i}t},
      booktitle={Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics},
      year={2020}
    }
    
    DPR
    @misc{karpukhin2020dense,
        title={Dense Passage Retrieval for Open-Domain Question Answering},
        author={Vladimir Karpukhin and Barlas Oğuz and Sewon Min and Patrick Lewis and Ledell Wu and Sergey Edunov and Danqi Chen and Wen-tau Yih},
        year={2020},
        eprint={2004.04906},
        archivePrefix={arXiv},
        primaryClass={cs.CL}
    }