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WikiGraphs

This package provides tools to download the WikiGraphs dataset [1], collected by pairing each Wikipedia article from WikiText-103 [2] with a knowledge graph (a subgraph from Freebase knowledge graph [3]). The baseline code to reproduce results in [1] is included as well. We hope this can spur more interest in developing models that can generate long text conditioned on graph and generate graphs given text.

Setup Jax environment

Jax, Haiku, Optax, and Jraph are needed for this package. It has been developed and tested on python 3 with the following packages:

  • Jax==0.2.13
  • Haiku==0.0.5.dev
  • Optax==0.0.6
  • Jraph==0.0.1.dev

Other packages required can be installed via:

pip install -r requirements.txt

Note: you may need to use pip3 to select pip for python 3 and --user option to install the packages to avoid permission issues.

Installation

pip install -e .

Preparing the data

Download the data

You can download and unzip the data by running the following command:

bash scripts/download.sh

This will put the downloaded WikiText-103 data in a temporary directory /tmp/data with the tokenized WikiText-103 data in /tmp/data/wikitext-103 and the raw data in /tmp/data/wikitext-103-raw.

This script will also download our processed Freebase knowledge graph data in a temporary directory /tmp/data/freebase.

Build vocabularies

For WikiText-103, run the following command to generate a vocabulary file:

python scripts/build_vocab.py \
  --vocab_file_path=/tmp/data/wikitext-vocab.csv \
  --data_dir=/tmp/data/wikitext-103

You can change the default file paths but make sure you make them consistent.

Pair Freebase graphs with WikiText

You can run the following command to pair the Freebase graphs with WikiText-103 articles:

python scripts/freebase_preprocess.py \
  --freebase_dir=/tmp/data/freebase/max256 \
  --output_dir=/tmp/data/wikigraphs/max256

where the freebase_dir /tmp/data/freebase/max256 is the directory that contains the Fsreebase graphs, which should have files train.gz, valid.gz and test.gz in it; and output_dir is the directory that will contain the generated paired Freebase-WikiText data.

Note: you may need to use python3 to select python 3 if you have both python 2 and 3 on your system.

Given that there are the following number of articles in WikiText-103:

Subset #articles
Train 28472*
Valid 60
Test 60

*Official number is 28475 but we were only able to find 28472 articles in training set.

Our dataset covers around 80% of the WikiText articles:

Max graph size 256 512 1024
#articles in training set 23431 23718 23760
Trainining set coverage 82.3% 83.3% 83.5%
#articles in validation set 48 48 48
Validation set coverage 80% 80% 80%
#articles in test set 43 43 43
Test set coverage 71.7% 71.7% 71.7%

Build vocabulary for WikiGraphs

You can build the vocabulary for the graph data (the max256 version) by running the following command:

python scripts/build_vocab.py \
  --vocab_file_path=/tmp/data/graph-vocab.csv \
  --data_dir=/tmp/data/wikigraphs \
  --version=max256 \
  --data_type=graph \
  --threshold=15

This gives us a vocabulary of size 31,087, with each token included in the vocabulary appearing at least 15 times.

You also need to build a separate text vocabulary for the WikiGraphs data, as our training set does not cover 100% of WikiText-103.

python scripts/build_vocab.py \
  --vocab_file_path=/tmp/data/text-vocab.csv \
  --data_dir=/tmp/data/wikigraphs \
  --version=max256 \
  --data_type=text \
  --threshold=3

Here we choose threshold 3 which is also used by the original WikiText-103 data, this gives us a vocabulary size of 238,068, only slightly smaller than the original vocabulary size.

Note that when loading these vocabularies to build tokenizers, our tokenizers will add a few extra tokens, like <bos>, <pad>, so the final vocab size might be slightly different from the numbers above, depending on which tokenizer you choose to use.

We only showcase how to build the vocabulary for the max256 version. The above steps can be easily changed for the max512 and max1024 version.

Loading the dataset

We provide JAX modules to load the WikiGraphs dataset. There are three classes in wikigraphs/data/paired_dataset.py:

  • TextOnlyDataset: loads only the text part of the WikiGraphs data
  • Bow2TextDataset: loads text and the paired graph representated as one big bag-of-words (BoW) on all nodes and edges from the graph
  • Graph2TextDataset: returns text and the paired graph in which each node or edge is represented by a BoW

Different versions of the dataset can be accessed by changing the version argument in each class. For more detailed usage please refer to wikigraphs/data/paired_dataset_test.py. Besides, the original WikiText dataset can be loaded via the Dataset class in wikigraphs/data/wikitext.py.

Note: you may want to change the default data directory if you prefer to place it elsewhere.

Run baseline models

To quickly test-run a small model with 1 GPU:

python main.py --model_type=graph2text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/graph2text \
  --job_mode=train \
  --train_batch_size=2 \
  --gnn_num_layers=1 \
  --num_gpus=1

To run the default baseline unconditional TransformerXL on Wikigraphs with 8 GPUs:

python main.py --model_type=text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/text \
  --job_mode=train \
  --train_batch_size=64 \
  --gnn_num_layers=1 \
  --num_gpus=8

To run the default baseline BoW-based TransformerXL on Wikigraphs with 8 GPUs:

python main.py --model_type=bow2text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/bow2text \
  --job_mode=train \
  --train_batch_size=64 \
  --gnn_num_layers=1 \
  --num_gpus=8

To run the default baseline Nodes-only GNN-based TransformerXL on Wikigraphs with 8 GPUs:

python main.py --model_type=bow2text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/bow2text \
  --job_mode=train \
  --train_batch_size=64 \
  --gnn_num_layers=0 \
  --num_gpus=8

To run the default baseline GNN-based TransformerXL on Wikigraphs with 8 GPUs:

python main.py --model_type=graph2text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/graph2text \
  --job_mode=train \
  --train_batch_size=64 \
  --gnn_num_layers=1 \
  --num_gpus=8

We ran our experiments in the paper using 8 Nvidia V100 GPUs. Reduce the batch size if the model does not fit into memory. To allow for batch parallization for the GNN-based (graph2text) model, we pad graphs to the largest graph in the batch. The full run takes almost 4 days. BoW- and nodes-based models can be trained within 14 hours because there is no additional padding.

To evaluate the model on the validation set (this only uses 1 GPU):

python main.py --model_type=graph2text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/graph2text \
  --job_mode=eval \
  --eval_subset=valid

To generate 960 samples from the model using the graphs in the validation set (using 8 GPUs):

python main.py --model_type=graph2text \
  --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/graph2text \
  --job_mode=sample \
  --eval_subset=valid \
  --num_gpus=8 \
  --num_samples=960

To compute the rBLEU score of the generated samples:

python scripts/compute_bleu_score.py --dataset=freebase2wikitext \
  --checkpoint_dir=/tmp/graph2text

To compute the retrieval scores:

python main.py --dataset=freebase2wikitext \
  --job_mode=retrieve \
  --checkpoint_dir=/tmp/graph2text

Citing WikiGraphs

To cite this work:

@inproceedings{wang2021wikigraphs,
  title={WikiGraphs: A Wikipedia Text-Knowledge Graph Paired Dataset},
  author={Wang, Luyu and Li, Yujia and Aslan, Ozlem and Vinyals, Oriol},
  booktitle={Proceedings of the Graph-Based Methods for Natural Language Processing (TextGraphs)},
  pages={67--82},
  year={2021}
}

License

All code copyright 2021 DeepMind Technologies Limited

Code is licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at:

http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

WikiGraphs [1] is licensed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International (CC BY-SA 4.0) license.

WikiText-103 data [2] (unchanged) is licensed by Salesforce.com, Inc. under the terms of the Creative Commons Attribution-ShareAlike 4.0 International (CC BY-SA 4.0) license. You can find details about CC BY-SA 4.0 at:

https://creativecommons.org/licenses/by-sa/4.0/legalcode

Freebase data [3] is licensed by Google LLC under the terms of the Creative Commons CC BY 4.0 license. You may obtain a copy of the License at:

https://creativecommons.org/licenses/by/4.0/legalcode

References

  1. L. Wang, Y. Li, O. Aslan, and O. Vinyals, "WikiGraphs: a wikipedia - knowledge graph paired dataset", in Proceedings of the Graph-based Methods for Natural Language Processing (TextGraphs), pages 67-82, 2021.
  2. S. Merity, C. Xiong, J. Bradbury, and R. Socher, "Pointer sentinel mixture models", arXiv: 1609.07843, 2016.
  3. K. Bollacker, C. Evans, P. Paritosh, T. Sturge, and J. Taylor, "Freebase: a collaboratively created graph database for structuring human knowledge", in Proceedings of ACM SIGMOD international conference on Managementof data, pages 1247–1250, 2008.