RuleBert: Teaching Soft Rules to Pre-trained Language Models
Abstract
While pre-trained language models (PLMs) are the go-to solution to tackle many natural language processing problems, they are still very limited in their ability to capture and to use common-sense knowledge. In fact, even if information is available in the form of approximate (soft) logical rules, it is not clear how to transfer it to a PLM in order to improve its performance for deductive reasoning tasks. Here, we aim to bridge this gap by teaching PLMs how to reason with soft Horn rules. We introduce a classification task where, given facts and soft rules, the PLM should return a prediction with a probability for a given hypothesis. We release the first dataset for this task, and we propose a revised loss function that enables the PLM to learn how to predict precise probabilities for the task. Our evaluation results show that the resulting fine-tuned models achieve very high performance, even on logical rules that were unseen at training. Moreover, we demonstrate that logical notions expressed by the rules are transferred to the fine-tuned model, yielding state-of-the-art results on external datasets.
Cite
@article{arxiv.2109.13006,
title = {RuleBert: Teaching Soft Rules to Pre-trained Language Models},
author = {Mohammed Saeed and Naser Ahmadi and Preslav Nakov and Paolo Papotti},
journal= {arXiv preprint arXiv:2109.13006},
year = {2021}
}
Comments
Logical reasoning, soft Horn rules, Transformers, pre-trained language models, combining symbolic and probabilistic methods, BERT