Commonsense knowledge about everyday concepts is an important asset for AI applications, such as question answering and chatbots. Recently, we have seen an increasing interest in the construction of structured commonsense knowledge bases (CSKBs). An important part of human commonsense is about properties that do not apply to concepts, yet existing CSKBs only store positive statements. Moreover, since CSKBs operate under the open-world assumption, absent statements are considered to have unknown truth rather than being invalid. This paper presents the UNCOMMONSENSE framework for materializing informative negative commonsense statements. Given a target concept, comparable concepts are identified in the CSKB, for which a local closed-world assumption is postulated. This way, positive statements about comparable concepts that are absent for the target concept become seeds for negative statement candidates. The large set of candidates is then scrutinized, pruned and ranked by informativeness. Intrinsic and extrinsic evaluations show that our method significantly outperforms the state-of-the-art. A large dataset of informative negations is released as a resource for future research.
翻译:关于日常概念的常识知识是AI应用的重要资产,例如问答和聊天室。最近,我们看到人们越来越关心结构化常识知识库(CSKBs)的建设。人类常识的一个重要部分是不适用于概念的属性,而现有的CSKBs只储存肯定声明。此外,由于CSKBs在开放世界的假设下运作,缺席声明被认为有未知的真理,而不是无效的。本文介绍了UNCOMMONSENESE实现信息化负面常识声明的框架。根据一个目标概念,在CSKB中确定了可比较的概念,为此假定了一个地方封闭世界的假设。这样,关于目标概念所缺乏的可比概念的积极声明成为负面声明候选人的种子。随后,大批候选人经过审查、调整和按信息性排列顺序排列。Intrinsic和extisic 评估表明,我们的方法大大超越了现状。大量的信息否定数据集被发布为未来研究的资源。