ReasonBERT: Pre-trained to Reason with Distant Supervision
Abstract
We present ReasonBert, a pre-training method that augments language models with the ability to reason over long-range relations and multiple, possibly hybrid contexts. Unlike existing pre-training methods that only harvest learning signals from local contexts of naturally occurring texts, we propose a generalized notion of distant supervision to automatically connect multiple pieces of text and tables to create pre-training examples that require long-range reasoning. Different types of reasoning are simulated, including intersecting multiple pieces of evidence, bridging from one piece of evidence to another, and detecting unanswerable cases. We conduct a comprehensive evaluation on a variety of extractive question answering datasets ranging from single-hop to multi-hop and from text-only to table-only to hybrid that require various reasoning capabilities and show that ReasonBert achieves remarkable improvement over an array of strong baselines. Few-shot experiments further demonstrate that our pre-training method substantially improves sample efficiency.
Cite
@article{arxiv.2109.04912,
title = {ReasonBERT: Pre-trained to Reason with Distant Supervision},
author = {Xiang Deng and Yu Su and Alyssa Lees and You Wu and Cong Yu and Huan Sun},
journal= {arXiv preprint arXiv:2109.04912},
year = {2021}
}
Comments
Accepted to EMNLP'2021. Our code and pre-trained models are available at https://github.com/sunlab-osu/ReasonBERT