Discovering Subsumption Relationships for Web-Based Ontologies

Dana Movshovitz-Attias, Steven Euijong Whang, Natasha Noy, A. Halevy
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引用次数: 11

Abstract

As search engines are becoming smarter at interpreting user queries and providing meaningful responses, they rely on ontologies to understand the meaning of entities. Creating ontologies manually is a laborious process, and resulting ontologies may not reflect the way users think about the world, as many concepts used in queries are noisy, and not easily amenable to formal modeling. There has been considerable effort in generating ontologies from Web text and query streams, which may be more reflective of how users query and write content. In this paper, we describe the LATTE system that automatically generates a subconcept--superconcept hierarchy, which is critical for using ontologies to answer queries. LATTE combines signals based on word-vector representations of concepts and dependency parse trees; however, LATTE derives most of its power from an ontology of attributes extracted from the Web that indicates the aspects of concepts that users find important. LATTE achieves an F1 score of 74%, which is comparable to expert agreement on a similar task. We additionally demonstrate the usefulness of LATTE in detecting high quality concepts from an existing resource of IsA links.
发现基于web的本体的包容关系
随着搜索引擎在解释用户查询和提供有意义的响应方面变得越来越智能,它们依赖于本体来理解实体的含义。手动创建本体是一个费力的过程,生成的本体可能无法反映用户对世界的看法,因为查询中使用的许多概念都是嘈杂的,不容易进行形式化建模。在从Web文本和查询流生成本体方面已经付出了相当大的努力,这可能更能反映用户查询和编写内容的方式。在本文中,我们描述了自动生成子概念-超概念层次结构的LATTE系统,这对于使用本体回答查询至关重要。LATTE结合了基于概念的词向量表示和依赖解析树的信号;然而,LATTE的大部分功能来自于从Web中提取的属性本体,该本体指出了用户认为重要的概念方面。LATTE达到了74%的F1分数,这与专家对类似任务的一致意见相当。我们还演示了LATTE在从现有的IsA链接资源中检测高质量概念方面的有用性。
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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