English

How Context Affects Language Models' Factual Predictions

Computation and Language 2020-05-12 v1

Abstract

When pre-trained on large unsupervised textual corpora, language models are able to store and retrieve factual knowledge to some extent, making it possible to use them directly for zero-shot cloze-style question answering. However, storing factual knowledge in a fixed number of weights of a language model clearly has limitations. Previous approaches have successfully provided access to information outside the model weights using supervised architectures that combine an information retrieval system with a machine reading component. In this paper, we go a step further and integrate information from a retrieval system with a pre-trained language model in a purely unsupervised way. We report that augmenting pre-trained language models in this way dramatically improves performance and that the resulting system, despite being unsupervised, is competitive with a supervised machine reading baseline. Furthermore, processing query and context with different segment tokens allows BERT to utilize its Next Sentence Prediction pre-trained classifier to determine whether the context is relevant or not, substantially improving BERT's zero-shot cloze-style question-answering performance and making its predictions robust to noisy contexts.

Keywords

Cite

@article{arxiv.2005.04611,
  title  = {How Context Affects Language Models' Factual Predictions},
  author = {Fabio Petroni and Patrick Lewis and Aleksandra Piktus and Tim Rocktäschel and Yuxiang Wu and Alexander H. Miller and Sebastian Riedel},
  journal= {arXiv preprint arXiv:2005.04611},
  year   = {2020}
}

Comments

accepted at AKBC 2020

R2 v1 2026-06-23T15:25:58.261Z