Assessing confidence of knowledge base content with an experimental study in entity resolution

Michael L. Wick, Sameer Singh, Ari Kobren, A. McCallum
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引用次数: 7

Abstract

The purpose of this paper is to begin a conversation about the importance and role of confidence estimation in knowledge bases (KBs). KBs are never perfectly accurate, yet without confidence reporting their users are likely to treat them as if they were, possibly with serious real-world consequences. We define a notion of confidence based on the probability of a KB fact being true. For automatically constructed KBs we propose several algorithms for estimating this confidence from pre-existing probabilistic models of data integration and KB construction. In particular, this paper focuses on confidence estimation in entity resolution. A goal of our exposition here is to encourage creators and curators of KBs to include confidence estimates for entities and relations in their KBs.
基于实体解析的知识库内容置信度评估实验研究
本文的目的是开始讨论知识库(KBs)中置信度估计的重要性和作用。KBs从来都不是完全准确的,但如果没有信心报告,它们的用户很可能会把它们当成是完全准确的,这可能会带来严重的现实后果。我们基于知识库事实为真的概率来定义置信度的概念。对于自动构建的知识库,我们提出了几种算法来从数据集成和知识库构建的预先存在的概率模型中估计这种置信度。本文重点研究了实体分辨中的置信度估计问题。我们在这里展示的一个目标是鼓励KBs的创建者和策展人在其KBs中包括对实体和关系的置信度估计。
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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