首页> 外文会议>Joint international semantic technology conference >An Automatic Instance Expansion Framework for Mapping Instances to Linked Data Resources
【24h】

An Automatic Instance Expansion Framework for Mapping Instances to Linked Data Resources

机译:自动实例扩展框架,用于将实例映射到链接的数据资源

获取原文

摘要

Linked Data is an utterly valuable component for semantic technologies because it can be used for accessing and distributing knowledge from one data source to other data sources via structured links. Therefore, mapping instances to Linked Data resources plays a key role for consuming knowledge in Linked Data resources so that we can understand instances more precisely. Since an instance, which can be aligned to Linked Data resources, is enriched its information by other instances, the instance then is full of information, which perfectly describes itself. Nevertheless, mapping instances to Linked Data resources is still challenged due to the heterogeneity problem and the multiple data source problem as well. Most techniques focus on mapping instances between two specific data sources and deal with the heterogeneity problem. Mapping instances particularly relying on two specific data sources is not enough because it will miss an opportunity to map instances to other sources. We therefore present the Instance Expansion Framework, which automatically discover and map instances more than two specific data sources in Linked Data resources. The framework consists of three components: Candidate Selector, Instance Matching and Candidate Expander. Experiments show that the Candidate Expander component is significantly important for mapping instances to Linked Data resources.
机译:链接数据是语义技术的一个非常有价值的组件,因为它可用于通过结构化链接访问知识并将知识从一个数据源分发到其他数据源。因此,将实例映射到链接数据资源在消费链接数据资源中的知识方面起着关键作用,以便我们可以更准确地理解实例。由于可以与链接数据资源对齐的实例被其他实例丰富了其信息,因此该实例充满了可以完美描述自身的信息。但是,由于异构性问题和多数据源问题,将实例映射到链接数据资源仍然面临挑战。大多数技术着重于在两个特定数据源之间映射实例并处理异质性问题。仅仅依靠两个特定的数据源来映射实例是不够的,因为这将失去将实例映射到其他源的机会。因此,我们提供了实例扩展框架,该框架可自动发现和映射链接数据资源中两个以上特定数据源的实例。该框架由三个组件组成:候选选择器,实例匹配和候选扩展器。实验表明,候选扩展器组件对于将实例映射到链接数据资源非常重要。

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