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Knowledge Graph Language Model

This repo contains an implementation of the KGLM model described in "Barack's Wife Hillary: Using Knowledge Graphs for Fact-Aware Language Modeling", Robert L. Logan IV, Nelson F. Liu, Matthew E. Peters, Matt Gardner and Sameer Singh, ACL 2019 [arXiv].

Setup

You will need Python 3.5+. Dependencies can be installed by running:

pip install -r requirements.txt

Data

KGLM is trained on the Linked WikiText-2 dataset which can be downloaded at https://rloganiv.github.io/linked-wikitext-2.

Additionally, you will need embeddings for entities/relations in the Wikidata knowledge graph, as well as access to the knowledge graph itself (in order to look up entity aliases/related entities). For convenience, we provide pre-trained embeddings and pickled dictionaries containing the relevant portions of Wikidata here.

Training

To train the model run:

allennlp train [path to config] -s [path to save checkpoint to] --include-package kglm

example model configurations are provided in the experiments directory.

Perplexity Evaluation

To estimate perplexity of a trained model on held-out data run:

python -m kglm.run evaluate-perplexity \
    [model_archive_file] \
    [sampler_archive_file] \
    [input_file]

where:

  • model_archive_file - Trained (generative) model checkpoint. This is the model whose perplexity will be evaluated.
  • sampler_archive_file - Trained (discriminative) model checkpoint. This is the model used to create annotations during importance sampling. See Section 4 of the paper for more details about importance sampling.
  • input_file - Path to dataset to measure perplexity on.

Sentence Completion

To perform sentence completion experiments run:

allennlp predict --predictor cloze [model_archive_file] [input_file]

where

  • model_archive_file - Trained (generative) model checkpoint. This is the model whose perplexity will be evaluated.
  • input_file - Path to dataset to measure perplexity on.

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