因果事件图引导的基于语言的时空问题解答

Kaushik Roy, Alessandro Oltramari, Yuxin Zi, Chathurangi Shyalika, Vignesh Narayanan, Amit Sheth
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引用次数: 0

摘要

大型语言模型擅长编码和利用基于文本的大型语料库中的语言模式来完成各种任务,包括基于时空事件的问题解答(QA)。然而,由于对基于文本的世界投影进行编码,它们也被证明缺乏对此类事件的全面理解,例如,缺乏对直观物理和事件间因果关系的感知。在这项工作中,我们建议使用因果事件图(CEG)来增强语言模型中对时空事件的理解,使用一种新颖的方法,同时为模型对 CEG 的捕捉提供证明。CEG 由节点表示的事件和表示事件间因果关系的边组成。我们针对基准时空质量保证任务对我们的方法进行了实验和评估,结果表明,我们的方法在定量和定性方面都比最先进的基准方法表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Causal Event Graph-Guided Language-based Spatiotemporal Question Answering
Large Language Models have excelled at encoding and leveraging language patterns in large text-based corpora for various tasks, including spatiotemporal event-based question answering (QA). However, due to encoding a text-based projection of the world, they have also been shown to lack a full bodied understanding of such events, e.g., a sense of intuitive physics, and cause-and-effect relationships among events. In this work, we propose using causal event graphs (CEGs) to enhance language understanding of spatiotemporal events in language models, using a novel approach that also provides proofs for the model’s capture of the CEGs. A CEG consists of events denoted by nodes, and edges that denote cause and effect relationships among the events. We perform experimentation and evaluation of our approach for benchmark spatiotemporal QA tasks and show effective performance, both quantitative and qualitative, over state-of-the-art baseline methods.
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