hugochan / BAMnet

Code & data accompanying the NAACL 2019 paper "Bidirectional Attentive Memory Networks for Question Answering over Knowledge Bases"

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BAMnet

Code & data accompanying the NAACL2019 paper "Bidirectional Attentive Memory Networks for Question Answering over Knowledge Bases"

Get started

Prerequisites

This code is written in python 3. You will need to install a few python packages in order to run the code. We recommend you to use virtualenv to manage your python packages and environments. Please take the following steps to create a python virtual environment.

  • If you have not installed virtualenv, install it with pip install virtualenv.
  • Create a virtual environment with virtualenv venv.
  • Activate the virtual environment with source venv/bin/activate.
  • Install the package requirements with pip install -r requirements.txt.

Run the KBQA system

  • Download the preprocessed data from here and put the data folder under the root directory.

  • Create a folder (e.g., runs/WebQ/) to save model checkpoint. You can download the pretrained models from here. (Note: if you cannot access the above data and pretrained models, please download from here.)

  • Please modify the config files in the src/config/ folder to suit your needs. Note that you can start with modifying only the data folder (e.g., data_dir, model_file, pre_word2vec) and vocab size (e.g., vocab_size, num_ent_types, num_relations), and leave other hyperparameters as they are.

  • Go to the BAMnet/src folder, train the BAMnet model

     python train.py -config config/bamnet_webq.yml
    
  • Test the BAMnet model (with ground-truth topic entity)

    python test.py -config config/bamnet_webq.yml
    
  • Train the topic entity predictor

    python train_entnet.py -config config/entnet_webq.yml
    
  • Test the topic entity predictor

    python test_entnet.py -config config/entnet_webq.yml
    
  • Test the whole system (BAMnet + topic entity predictor)

    python joint_test.py -bamnet_config config/bamnet_webq.yml -entnet_config config/entnet_webq.yml -raw_data ../data/WebQ
    

Preprocess the dataset on your own

  • Go to the BAMnet/src folder, to prepare data for the BAMnet model, run the following cmd:

     python build_all_data.py -data_dir ../data/WebQ -fb_dir ../data/WebQ -out_dir ../data/WebQ
    
  • To prepare data for the topic entity predictor model, run the following cmd:

     python build_all_data.py -dtype ent -data_dir ../data/WebQ -fb_dir ../data/WebQ -out_dir ../data/WebQ
    

Note that in the message printed out, your will see some data statistics such as vocab_size, num_ent_types , num_relations. These numbers will be used later when modifying the config files.

  • Download the pretrained Glove word ebeddings glove.840B.300d.zip.

  • Unzip the file and convert glove format to word2vec format using the following cmd:

     python -m gensim.scripts.glove2word2vec --input glove.840B.300d.txt --output glove.840B.300d.w2v
    
  • Fetch the pretrained Glove vectors for our vocabulary.

     python build_pretrained_w2v.py -emb glove.840B.300d.w2v -data_dir ../data/WebQ -out ../data/WebQ/glove_pretrained_300d_w2v.npy -emb_size 300
    

Architecture

Experiment results on WebQuestions

Results on WebQuestions test set. Bold: best in-category performance.

Predicted answers of BAMnet w/ and w/o bidirectional attention on the WebQuestions test set

pred_examples

Attention heatmap generated by the reasoning module

attn_heatmap

Reference

If you found this code useful, please consider citing the following paper:

Yu Chen, Lingfei Wu, Mohammed J. Zaki. "Bidirectional Attentive Memory Networks for Question Answering over Knowledge Bases." In Proc. 2019 Annual Conference of the North American Chapter of the Association for Computational Linguistics (NAACL-HLT2019). June 2019.

@article{chen2019bidirectional,
  title={Bidirectional Attentive Memory Networks for Question Answering over Knowledge Bases},
  author={Chen, Yu and Wu, Lingfei and Zaki, Mohammed J},
  journal={arXiv preprint arXiv:1903.02188},
  year={2019}
}

About

Code & data accompanying the NAACL 2019 paper "Bidirectional Attentive Memory Networks for Question Answering over Knowledge Bases"

License:Apache License 2.0


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