论文标题
从文本中学习因果贝叶斯网络
Learning Causal Bayesian Networks from Text
论文作者
论文摘要
因果关系构成了人工智能系统推理和决策的基础。为了利用当今可用的大量文本数据,近年来,从文本中自动发现因果关系已成为一个重大挑战。该领域中的现有方法仅限于在个别事件之间提取低级关系。为了克服现有方法的局限性,在本文中,我们提出了一种在概念层面自动推断人书面语言因果关系的方法。为此,我们利用了从文本创建的概念和语言变量等级的特征,并以因果关系贝叶斯网络的形式表示提取的因果关系。我们的实验表明,我们的方法优于从文本中推断出复杂的因果推理方面的现有方法。
Causal relationships form the basis for reasoning and decision-making in Artificial Intelligence systems. To exploit the large volume of textual data available today, the automatic discovery of causal relationships from text has emerged as a significant challenge in recent years. Existing approaches in this realm are limited to the extraction of low-level relations among individual events. To overcome the limitations of the existing approaches, in this paper, we propose a method for automatic inference of causal relationships from human written language at conceptual level. To this end, we leverage the characteristics of hierarchy of concepts and linguistic variables created from text, and represent the extracted causal relationships in the form of a Causal Bayesian Network. Our experiments demonstrate superiority of our approach over the existing approaches in inferring complex causal reasoning from the text.