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Code and data for reproducing baselines for TopiOCQA, an open-domain conversational question-answering dataset

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TopiOCQA: Open-domain Conversational Question Answering with Topic Switching

arxiv

This repository contains code and data for reproducing the results of our paper:

Vaibhav Adlakha, Shehzaad Dhuliawala, Kaheer Suleman, Harm de Vries, Siva Reddy. TopiOCQA: Open-domain Conversational Question Answering with Topic Switching.

To download and interactively explore the dataset, please visit the project page.

To cite this work, please use the following citation:

@article{adlakha2022topiocqa,
  title={Topi{OCQA}: Open-domain Conversational Question Answering with Topic Switching},
  author={Adlakha, Vaibhav and Dhuliawala, Shehzaad and Suleman, Kaheer and de Vries, Harm and Reddy, Siva},
  journal={Transactions of the Association for Computational Linguistics},
  volume = {10},
  pages = {468-483},
  year = {2022},
  month = {04},
  year={2022},
  issn = {2307-387X},
  doi = {10.1162/tacl_a_00471},
  url = {https://doi.org/10.1162/tacl\_a\_00471},
  eprint = {https://direct.mit.edu/tacl/article-pdf/doi/10.1162/tacl\_a\_00471/2008126/tacl\_a\_00471.pdf},
}

This repository contains the code for the following models described in the paper.

  1. DPR (Dense Passage Retrieval)
  2. FiD (Fusion-in-Decoder)

Resources & Data

All preprocessed data, model checkpoints, trained passage embeddings, and results are available for download using python download_data.py. The script is based on download_data.py script in DPR repository. Here is an example:

python download_data.py --resource data.retriever.all_history.train

To see all options for --resource, run python download_data.py.

By default, the downloaded data is stored in downloads directory. To change the directory, use --output_dir argument.

Modeling Retriever

Both DPR and FiD models use retriever detailed in DPR paper. The retriever is a bi-encoder network that takes in a query and a passage and outputs an embedding for both. The score is computed as the dot product of the query and passage embeddings. TopiOCQA uses three question representation types as illustrated below:

Q1 : who is lead singer of rage against the machine?
A1 : Zack de la Rocha

Q2 : when was it formed?
A2 : 1991

Q3 : was it nominated for any award?
Original : was it nominated for any award
AllHistory : who is lead singer of rage against the machine [SEP] Zack de la Rocha [SEP] when was it formed [SEP] 1991 [SEP] was it nominated for any award
Rewrites : was rage against the machine nominated for any award

For more details on question representations, please see Section 5.1.2 of the paper.

The Wikipedia corpus used in our work can be downloaded using the following command:

python download_data.py --resource data.wikipedia_split.full_wiki

For modeling, each Wikipedia article is chunked into passages. The corpus in the chucked format can be downloaded using data.wikipedia_split.full_wiki_segments as the resource key.

DPR retriever requires question-passage pairs in the following format for training:

[
  {
	"question": "....",
	"answers": ["...", "...", "..."],
	"positive_ctxs": [{
		"title": "...",
		"text": "...."
	}],
	"negative_ctxs": ["..."],
	"hard_negative_ctxs": ["..."]
  },
  ...
]

We provide TopiOCQA data pre-processed in this format. For AllHistory question representation, the dataset can be downloaded with the following command:

python download_data.py --resource data.retriever.all_history

The retriever model reported in the paper was trained on 4 x 40GB A100 GPU machines, using the following command:

python -m torch.distributed.launch --nproc_per_node=4 \
        DPR/train_dense_encoder.py \
        train_datasets=[topiocqa_train_all_history] \
        dev_datasets=[topiocqa_dev_all_history] \
        train=biencoder_topiocqa \
        output_dir={your output dir}

If the downloaded files are not kept in the downloads directory, please change the file parameters in DPR/conf/datasets/encoder_train_default.yaml to absolute paths of the dataset files.

Retiever Inference

The trained model checkpoint for AllHistory can also be downloaded with the following command:

python download_data.py --resource model_checkpoints.retriever.dpr.all_history

Before performing inference, the passage encoder needs to generate embeddings for all passages in the corpus. This is highly parallelizable as each shard of the corpus can be proccessed asynchronously, as explained in DPR repository. The passage embeddings can be generated using the following command:

python DPR/generate_dense_embeddings.py \
        model_file={path to model file} \
        ctx_src=dpr_wiki_topiocqa \
        shard_id={shard} \
        num_shards=50 \
        out_file={output directory + name prefix, e.g. /home/topiocqa/downloads/passage_embeddings/all_history/wikipedia_passages} \
        batch_size=128

{shard} takes all numeric values between 0 and 49. Each shard was processed on 2 x 16GB V100 GPU machines. This can also be run on a single machine by reducing the batch size. We provide the generated passage embeddings which can be downloaded using passage_embeddings.all_history.wikipedia_passages as the resource key.

For retiever inference, the original DPR codebase uses datasets in CSV format. We provide TopiOCQA data pre-processed in CSV format, which can be downloaded using data.retriever.qas.all_history as resource key.

We can now perform retrieval inference. The following command is for inference over the dev set of TopiOCQA:

python DPR/dense_retriever.py \
        model_file={path to model file} \
        qa_dataset=topiocqa_dev_all_history \
        ctx_datatsets=[dpr_wiki_topiocqa] \
        encoded_ctx_files=[{list of encoded document files glob expression, e.g. \"/home/topiocqa/downloads/passage_embeddings/all_history/wikipedia_passages_*\"}] \
        out_file={your output file}

The output file with the retrieved results has the following format:

[
    {
        "question": "...",
        "answers": ["..."],
        "ctxs": [
            {
                "id": "...",
                "title": "...",
                "text": "....",
                "score": "...",
                "has_answer": true|false
     },
]

Retrieval inference for DPR is computationally expensive as it builds an in-memory index of the entire corpus. For our corpus (~25.7 million passages), the peak RAM consumption was 148GB. The GPU infrastucture used for inference was 4 x 16GB V100 GPU machines. The results from retrieval inference can also be downloaded by using results.retriever.dpr.all_history as the resource key.

DPR inference procedure evaluates by checking the presence of answer span in the retrieved passage. This is sub-optimal for TopiOCQA as it is an abstractive question-answering dataset, therefore the answer span may not be present in any passage. TopiOCQA provides the gold question-passage pairs which can be used for evaluation. Given the retriever inference results, the evaluation metrics can be computed by using the following command:

python evaluate_retriever.py \
        --data_file {path to data file in JSON format} \
        --results_file {path to retriever results file}

Modeling Reader

We experiment with two reader models - (1) DPR Reader and (2) FiD (Fusion-in-Decoder). Both reader models directly take the retriever results as input. Additionally, during training, we also provide the gold question-passage pairs.

DPR Reader

To train the DPR Reader model, we use the following command:

python DPR/train_extractive_reader.py \
        encoder.sequence_length=384 \
        train_files={path to the retriever train set results file} \
        dev_files={path to the retriever dev set results file} \
        gold_passages_src={path to gold passage info file for train set} \
        gold_passages_src_dev={path to gold passage info file for train set} \
        output_dir={your output dir}

The revelant files to run the above command can be downloaded using the following resource keys: results.retriever.dpr.all_history, data.gold_passages_info.all_history. First time run will preprocess train_files & dev_files and convert them into serialized set of .pkl files in the same location and will use them on all subsequent runs. The DPR reader model reported in the paper was trained on 8 x 32GB V100 GPU machines. The trained checkpoint for DPR Reader trained on DPR Retriever results can be downloaded using model_checkpoints.reader.dpr_reader.dpr_retriever.all_history.

To evaluate the DPR Reader model, we use the same command as above, but without train_files argument:

python DPR/train_extractive_reader.py \
        encoder.sequence_length=384 \
        prediction_results_file={your output file path} \
        dev_files={path to the retriever results file} \
        eval_top_docs=[10,20,40,50,80,100] \
        model_file={path to model file} \
        train.dev_batch_size=80 \
        train.log_batch_step=1 \
        passages_per_question_predict=100

The inference results can be downloaded using results.reader.dpr_reader.dpr_retriever.all_history as the resource key.

FiD

FiD (Fusion-in-Decoder) is trained using the following command on 8 x 32GB V100 GPU machines.:

python -m torch.distributed.launch --nproc_per_node=8 \
        FiD/train_reader.py \
        --model_size base \
        --use_checkpoint \
        --lr 0.00005 \
        --optim adamw \
        --scheduler linear \
        --weight_decay 0.01 \
        --text_maxlength 384 \
        --answer_maxlength 100 \
        --per_gpu_batch_size 2 \
        --accumulation_steps 4 \
        --n_context 50 \
        --total_step 15000 \
        --warmup_step 1000 \
        --eval_freq 1000 \
        --checkpoint_dir {your output dir} \
        --train_data {path to the retriever train set results file} \
        --gold_passages_train {path to gold passage info file for train set} \
        --eval_data {path to the retriever dev set results file}

The trained checkpoint for FiD trained on DPR Retriever results can be downloaded using model_checkpoints.reader.fid.dpr_retriever.all_history. The downloaded file will be a compressed folder which will be required to be extracted before moving to evaluation step.

To evaluate the FiD model, we use the following command on a single 32GB V100 GPU machine:

python FiD/test_reader.py \
        --model_path {path to model file} \
        --eval_data {path to the retriever results file} \
        --text_maxlength 384 \
        --answer_maxlength 100 \
        --per_gpu_batch_size 16 \
        --n_context 50 \
        --checkpoint_dir {your output file path} \
        --name {dataset split, e.g. test} \
        --write_results \
        --eval_print_freq 10

The inference results can be downloaded using results.reader.fid.dpr_retriever.all_history as the resource key.

Reader Result Evaluation

Evaluation in TopiOCQA is different from that performed in original implementation of DPR (Refer to Section 5.2 in the paper). Our evaluation code is based on CoQA. We use the following command to evaluate the reader results:

python evaluate_reader.py \
        --data_file {path to train/dev split of the dataset} \
        --results_file {path to reader results file}

Contact

For queries and clarifications please contact vaibhav.adlakha (at) mila (dot) quebec


License

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.

CC BY-NC-SA 4.0