首页> 外文会议>International Conference on Applications of Natural Language to Informations Systems >Querying Linked Data Using Semantic Relatedness: A Vocabulary Independent Approach
【24h】

Querying Linked Data Using Semantic Relatedness: A Vocabulary Independent Approach

机译:使用语义相关性查询链接数据:词汇独立方法

获取原文

摘要

Linked Data brings the promise of incorporating a new dimension to the Web where the availability of Web-scale data can determine a paradigmatic transformation of the Web and its applications. However, together with its opportunities, Linked Data brings inherent challenges in the way users and applications consume the available data. Users consuming Linked Data on the Web, or on corporate intranets, should be able to search and query data spread over potentially a large number of heterogeneous, complex and distributed datasets. Ideally, a query mechanism for Linked Data should abstract users from the representation of data. This work focuses on the investigation of a vocabulary independent natural language query mechanism for Linked Data, using an approach based on the combination of entity search, a Wikipedia-based semantic relatedness measure and spreading activation. The combination of these three elements in a query mechanism for Linked Data is a new contribution in the space. Wikipedia-based relatedness measures address existing limitations of existing works which are based on similarity measures/term expansion based on WordNet. Experimental results using the query mechanism to answer 50 natural language queries over DBPedia achieved a mean reciprocal rank of 61.4%, an average precision of 48.7% and average recall of 57.2%, answering 70% of the queries.
机译:链接数据带来了将新维度合并到Web的网络,其中网络级数据的可用性可以确定Web的范式转换及其应用。然而,与其机会一起,链接数据在用户和应用程序消耗可用数据的方式中带来固有的挑战。消耗Web或企业内联网上的链接数据的用户应该能够搜索和查询潜在大量异构,复杂和分布式数据集的数据。理想情况下,链接数据的查询机制应抽出数据的表示。这项工作侧重于使用基于实体搜索组合的方法,基于维基百科的语义相关性测量和传播激活来调查链接数据的词汇独立自然语言查询机制。这三个元素在链接数据的查询机制中的组合是空间中的新贡献。基于Wikipedia的相关性措施解决了基于Wordnet的相似度量/术语扩展的现有工作的现有工作的现有限制。试验结果采用查询机制回答50个自然语言对DBPedia的查询达到平均互惠级别61.4%,平均精度为48.7%,平均召回量为57.2%,回答70%的查询。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号