发现属性名的结构

A. Halevy, Natasha Noy, Sunita Sarawagi, Steven Euijong Whang, Xiao Yu
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引用次数: 21

摘要

最近,搜索引擎投入了大量精力来回答来自结构化数据的实体属性查询,但主要集中在对频繁属性的查询上。与此同时,一些研究工作已经证明,用户感兴趣的属性有一个长尾,通常每类实体有数千个属性。研究人员开始利用这些新的属性集合来扩展本体,从而为搜索引擎提供动力,并识别实体属性查询。由于潜在属性的绝对数量,这样的任务要求我们在这个又长又重的属性尾部强加一些结构。本文介绍了一种基于规则的语法,通过表达属性名称的组合结构来组织属性的问题。这些规则为多词属性提供了紧凑和丰富的语义解释,同时从观察到的属性泛化到新的未见属性。本文描述了一种从大量属性名称中自动生成这种语法的无监督学习方法。实验表明,我们的方法可以在{\sc nations}的100,000个属性中发现精确的语法,同时对属性名称提供40倍的压缩。此外,我们的语法使我们能够将属性的精度从47%提高到90%以上,只需要最少的管理工作。因此,我们的方法提供了一种高效且可扩展的方法来扩展具有用户感兴趣属性的本体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering Structure in the Universe of Attribute Names
Recently, search engines have invested significant effort to answering entity--attribute queries from structured data, but have focused mostly on queries for frequent attributes. In parallel, several research efforts have demonstrated that there is a long tail of attributes, often thousands per class of entities, that are of interest to users. Researchers are beginning to leverage these new collections of attributes to expand the ontologies that power search engines and to recognize entity--attribute queries. Because of the sheer number of potential attributes, such tasks require us to impose some structure on this long and heavy tail of attributes. This paper introduces the problem of organizing the attributes by expressing the compositional structure of their names as a rule-based grammar. These rules offer a compact and rich semantic interpretation of multi-word attributes, while generalizing from the observed attributes to new unseen ones. The paper describes an unsupervised learning method to generate such a grammar automatically from a large set of attribute names. Experiments show that our method can discover a precise grammar over 100,000 attributes of {\sc Countries} while providing a 40-fold compaction over the attribute names. Furthermore, our grammar enables us to increase the precision of attributes from 47\% to more than 90\% with only a minimal curation effort. Thus, our approach provides an efficient and scalable way to expand ontologies with attributes of user interest.
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