Back to Search Start Over

Mining Logical Event Schemas From Pre-Trained Language Models

Authors :
Lawley, Lane
Schubert, Lenhart
Publication Year :
2022

Abstract

We present NESL (the Neuro-Episodic Schema Learner), an event schema learning system that combines large language models, FrameNet parsing, a powerful logical representation of language, and a set of simple behavioral schemas meant to bootstrap the learning process. In lieu of a pre-made corpus of stories, our dataset is a continuous feed of "situation samples" from a pre-trained language model, which are then parsed into FrameNet frames, mapped into simple behavioral schemas, and combined and generalized into complex, hierarchical schemas for a variety of everyday scenarios. We show that careful sampling from the language model can help emphasize stereotypical properties of situations and de-emphasize irrelevant details, and that the resulting schemas specify situations more comprehensively than those learned by other systems.<br />Comment: To appear at ACL SRW 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2204.05939
Document Type :
Working Paper