链接开放词汇排名和术语发现

Ioannis Stavrakantonakis, A. Fensel, D. Fensel
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引用次数: 8

摘要

使用链接开放词汇表(LOV)策划的目录列表,在现有的500多个词汇表中进行搜索从来没有像今天这样容易。LOV搜索为探索词汇表术语空间提供了一个中心点。然而,对于非专家或语义注释专家来说,为给定网站内容的描述发现适当的术语仍然是很麻烦的。在这个方向上,所建议的方法是一种方法学的基础部分,该方法学旨在促进基于关键字搜索从大量注册词汇表中选择排名最高的术语。此外,它还首次在词汇表排名中引入了贡献者背景的角色,这是从LOV存储库中检索到的。有了这个补充,我们的目标是解决新发布的词汇表得分很低的问题。本文强调了通过调查选择词汇术语的困难,并描述了在上述方法中实现词汇排名的方法。
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Linked Open Vocabulary Ranking and Terms Discovery
Searching among the existing 500 and more vocabularies was never easier than today with the Linked Open Vocabularies (LOV) curated directory list. The LOV search provides one central point to explore the vocabulary terms space. However, it can be still cumbersome for non-experts or semantic annotation experts to discover the appropriate terms for the description of given website content. In this direction, the proposed approach is the cornerstone part of a methodology that aims to facilitate the selection of the highest ranked terms from the abundance of the registered vocabularies based on a keyword search. Moreover, it introduces for the first time the role of the contributors' background, which is retrieved from the LOV repository, in the ranking of the vocabularies. With this addition, we aim to address the issue of very low scores for the newly published vocabularies. The paper underlines the difficulty of selecting vocabulary terms through a survey and describes the approach that enables the ranking of vocabularies within the above mentioned methodology.
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