Open-Domain Hierarchical Event Schema Induction by Incremental Prompting and Verification

Sha Li, Ruining Zhao, Rui Zhao, Manling Li, Heng Ji, Chris Callison-Burch, Jiawei Han
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引用次数: 11

Abstract

Event schemas are a form of world knowledge about the typical progression of events. Recent methods for event schema induction use information extraction systems to construct a large number of event graph instances from documents, and then learn to generalize the schema from such instances. In contrast, we propose to treat event schemas as a form of commonsense knowledge that can be derived from large language models (LLMs). This new paradigm greatly simplifies the schema induction process and allows us to handle both hierarchical relations and temporal relations between events in a straightforward way. Since event schemas have complex graph structures, we design an incremental prompting and verification method IncPrompt to break down the construction of a complex event graph into three stages: event skeleton construction, event expansion, and event-event relation verification. Compared to directly using LLMs to generate a linearized graph, IncSchema can generate large and complex schemas with 7.2% F1 improvement in temporal relations and 31.0% F1 improvement in hierarchical relations. In addition, compared to the previous state-of-the-art closed-domain schema induction model, human assessors were able to cover ~10% more events when translating the schemas into coherent stories and rated our schemas 1.3 points higher (on a 5-point scale) in terms of readability.
通过增量提示和验证进行开域分层事件模式归纳
事件图式是一种关于事件典型进展的世界知识。最近的事件模式归纳方法使用信息提取系统从文档中构建大量事件图实例,然后从这些实例中学习归纳模式。相比之下,我们建议将事件模式视为一种常识性知识,可以从大型语言模型(LLM)中推导出来。这一新范式大大简化了模式归纳过程,使我们能够直接处理事件之间的层次关系和时间关系。由于事件模式具有复杂的图结构,我们设计了一种增量提示和验证方法 IncPrompt,将复杂事件图的构建分解为三个阶段:事件骨架构建、事件扩展和事件-事件关系验证。与直接使用 LLM 生成线性化图相比,IncSchema 可以生成大型复杂模式,在时间关系方面提高了 7.2% 的 F1,在层次关系方面提高了 31.0% 的 F1。此外,与之前最先进的闭域模式归纳模型相比,在将模式转化为连贯的故事时,人类评估者能够覆盖的事件数量增加了约 10%,而且在可读性方面,我们的模式评分高出 1.3 分(5 分制)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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