Combining Extraction and Generation for Constructing Belief-Consequence Causal Links

M. Alexeeva, Allegra A. Beal, M. Surdeanu
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引用次数: 1

Abstract

In this paper, we introduce and justify a new task—causal link extraction based on beliefs—and do a qualitative analysis of the ability of a large language model—InstructGPT-3—to generate implicit consequences of beliefs. With the language model-generated consequences being promising, but not consistent, we propose directions of future work, including data collection, explicit consequence extraction using rule-based and language modeling-based approaches, and using explicitly stated consequences of beliefs to fine-tune or prompt the language model to produce outputs suitable for the task.
结合提取与生成构建信念-结果因果关系
在本文中,我们介绍并证明了一个新的任务-基于信念的因果联系提取-并对大型语言模型- instructgpt -3 -生成信念的隐式结果的能力进行了定性分析。由于语言模型生成的结果有希望,但不一致,我们提出了未来工作的方向,包括数据收集,使用基于规则和基于语言建模的方法显式结果提取,以及使用明确陈述的信念结果来微调或提示语言模型产生适合任务的输出。
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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