基于本体约束的知识库自动光泽查找

Bhavana Dalvi, Einat Minkov, P. Talukdar, William W. Cohen
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引用次数: 35

摘要

虽然已经有很多关于自动构建结构化知识库(KBs)的研究,但大多数研究都集中在生成填充知识库的事实上。然而,有用的知识库必须超越事实。例如,人们发现glosses(简短的自然语言定义)在诸如词义消歧之类的任务中非常有用。然而,自动光泽查找的重要问题,即在最初无光泽的知识库中为实体分配光泽,相对来说还没有被探索。我们在本文中解决了这一差距。特别地,我们提出了GLOFIN,一种分层半监督学习算法,它有效地利用了有限的监督和可用的本体论约束。据我们所知,GLOFIN是第一个完成这项任务的系统。通过对真实世界数据集的大量实验,我们证明了GLOFIN的有效性。令人鼓舞的是,GLOFIN优于其他最先进的SSL算法,特别是在低监督设置中。我们还通过各种各样的KBs实验证明了GLOFIN对噪声的鲁棒性,范围从用户贡献(例如Freebase)到自动构建(例如NELL)。为了促进这一领域的进一步研究,我们公开了本文中使用的数据集和代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Gloss Finding for a Knowledge Base using Ontological Constraints
While there has been much research on automatically constructing structured Knowledge Bases (KBs), most of it has focused on generating facts to populate a KB. However, a useful KB must go beyond facts. For example, glosses (short natural language definitions) have been found to be very useful in tasks such as Word Sense Disambiguation. However, the important problem of Automatic Gloss Finding, i.e., assigning glosses to entities in an initially gloss-free KB, is relatively unexplored. We address that gap in this paper. In particular, we propose GLOFIN, a hierarchical semi-supervised learning algorithm for this problem which makes effective use of limited amounts of supervision and available ontological constraints. To the best of our knowledge, GLOFIN is the first system for this task. Through extensive experiments on real-world datasets, we demonstrate GLOFIN's effectiveness. It is encouraging to see that GLOFIN outperforms other state-of-the-art SSL algorithms, especially in low supervision settings. We also demonstrate GLOFIN's robustness to noise through experiments on a wide variety of KBs, ranging from user contributed (e.g., Freebase) to automatically constructed (e.g., NELL). To facilitate further research in this area, we have made the datasets and code used in this paper publicly available.
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