TL;DR
This paper investigates whether large language models inherently understand script knowledge by testing their ability to generate event sequences from scenarios, and proposes a pipeline to improve their performance in this task.
Contribution
The paper introduces a novel task of generating event sequence descriptions from scenarios and proposes a pipeline-based framework (SIF) to enhance LMs' script knowledge understanding.
Findings
Zero-shot LMs produce poor event sequences.
SIF significantly improves event sequence quality.
Manual analysis indicates further research is needed.
Abstract
Script Knowledge (Schank and Abelson, 1975) has long been recognized as crucial for language understanding as it can help in filling in unstated information in a narrative. However, such knowledge is expensive to produce manually and difficult to induce from text due to reporting bias (Gordon and Van Durme, 2013). In this work, we are interested in the scientific question of whether explicit script knowledge is present and accessible through pre-trained generative language models (LMs). To this end, we introduce the task of generating full event sequence descriptions (ESDs) given a scenario in the form of natural language prompts. In zero-shot probing experiments, we find that generative LMs produce poor ESDs with mostly omitted, irrelevant, repeated or misordered events. To address this, we propose a pipeline-based script induction framework (SIF) which can generate good quality ESDs…
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