Mapping and Cleaning Open Commonsense Knowledge Bases with Generative Translation

Julien Romero, Simon Razniewski
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引用次数: 1

Abstract

Structured knowledge bases (KBs) are the backbone of many know\-ledge-intensive applications, and their automated construction has received considerable attention. In particular, open information extraction (OpenIE) is often used to induce structure from a text. However, although it allows high recall, the extracted knowledge tends to inherit noise from the sources and the OpenIE algorithm. Besides, OpenIE tuples contain an open-ended, non-canonicalized set of relations, making the extracted knowledge's downstream exploitation harder. In this paper, we study the problem of mapping an open KB into the fixed schema of an existing KB, specifically for the case of commonsense knowledge. We propose approaching the problem by generative translation, i.e., by training a language model to generate fixed-schema assertions from open ones. Experiments show that this approach occupies a sweet spot between traditional manual, rule-based, or classification-based canonicalization and purely generative KB construction like COMET. Moreover, it produces higher mapping accuracy than the former while avoiding the association-based noise of the latter.
基于生成翻译的开放常识知识库的映射和清理
结构化知识库(KBs)是许多知识密集型应用程序的支柱,它们的自动化构建受到了相当大的关注。特别是,开放信息提取(OpenIE)经常用于从文本中归纳出结构。然而,尽管它允许较高的召回率,但提取的知识倾向于继承来自源和OpenIE算法的噪声。此外,OpenIE元组包含一组开放式的、非规范化的关系,这使得提取的知识在下游更难利用。在本文中,我们研究了将开放的知识库映射到现有知识库的固定模式的问题,特别是对于常识知识的情况。我们建议通过生成翻译来解决这个问题,即通过训练语言模型从开放的断言生成固定模式断言。实验表明,这种方法在传统的手动、基于规则或基于分类的规范化和纯生成的知识库结构(如COMET)之间占据了一个最佳位置。在避免了基于关联的噪声的同时,产生了比前者更高的映射精度。
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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